Method of treating large vessel occlusion stroke

ABSTRACT

The invention relates to the diagnosis of stroke resulting from occlusion of one or more large vessels in the brain, and in particular to the diagnosis of stroke resulting from occlusion of one or more large vessels in the brain using one or more biomarkers.

CROSS-REFERENCE TO RELATED APPLICATIONS

This application is a continuation of PCT/GB2020/053340, filed Dec. 22, 2020, which claims the benefit of priority to GB Application No.: 2005632.1, filed Apr. 17, 2020, each of which is incorporated herein by reference in its entirety.

REFERENCE TO A SEQUENCE LISTING

This application includes a Sequence Listing submitted electronically as an xml file named 34421-46001-Seq-Listing.xml, created on Sep. 9, 2022, with a size of 28.2 kilobytes. The Sequence Listing is incorporated herein by reference.

FIELD

The invention relates to the diagnosis of stroke resulting from occlusion of one or more large vessels in the brain, and in particular to the diagnosis of stroke resulting from occlusion of one or more large vessels in the brain using one or more biomarkers.

BACKGROUND

Stroke affects 16 million people in the world every year. More than 30% of these patients die and 90% of survivors develop permanent disabilities. Stroke is defined by the World Health Organisation as a clinical syndrome consisting of rapidly developing clinical signs of focal (or global in case of coma) disturbance of cerebral function with symptoms lasting 24 hours or longer or leading to death with no apparent cause other than a vascular origin. The definition of stroke thus excludes transient ischemic attack (TIA), which presents with the same or similar symptoms to stroke, but is a temporary disruption in the blood supply to part of the brain and is defined as lasting less than 24 hours; and stroke mimics, which are non-vascular conditions which present with neurological deficits simulating stroke, which include seizures and postictal paralysis; toxic-metabolic disturbances; brain tumours; infections, and migraine.

There are two main types of stroke: ischemic stroke and haemorrhagic stroke. The treatment regime for each is very different due to their different aetiologies.

Haemorrhagic stroke is due to the rupture of a blood vessel in the brain with consequent bleeding. There are two main types of haemorrhagic stroke: intracerebral haemorrhage (bleeding within the brain itself, due to either intraparenchymal haemorrhage (bleeding within the brain tissue) or intraventricular haemorrhage (bleeding within the brain's ventricular system)); and subarachnoid haemorrhage, (bleeding within the skull but outside of the brain tissue; more precisely, bleeding between the arachnoid mater and pia mater). Haemorrhagic stroke represents around 15% of stroke seen in patients.

Ischemic stroke is defined as the physical blockage of blood flow to an area of the brain, and represents around 85% of stroke seen in patients.

One type of ischemic stroke is stroke resulting from small vessel occlusion (SVO, also referred to as lacunar stroke). SVO stroke or lacunar stroke is caused by occlusion of one or more small vessels, typically that supply deep brain structures.

However, the deadliest type of ischemic stroke is stroke resulting from large vessel occlusion (LVO) or simply LVO stroke. LVO stroke results from occlusion of one or more large vessels in the brain¹ including the common carotid artery, basilar artery, vertebral artery, middle cerebral artery, anterior cerebral artery, posterior cerebral artery, external carotid artery, internal carotid artery and/or anterior cerebral arteries. Stroke resulting from LVO contributes disproportionately to stroke-related dependence and death¹.

The typical treatment for patients identified as suffering or having suffered from LVO stroke is mechanical thrombectomy (MT). MT is a surgical procedure that mechanically removes the clot via a probe inserted at the level of the groin. MT is typically only useful to treat LVO stroke, as the vessels affected in other types of ischemic strokes (such as SVO stroke) cannot be reached by the mechanical probe due to their depth within the brain and/or are too small to accommodate the mechanical probe. Treatment of LVO patients with MT significantly increases the chances of survival, as well as decreases the extent of disability²⁻⁴. Mechanical thrombectomy has been proven a safe and effective treatment for LVO stroke until 24 hours from stroke onset³, indicating that detection of LVO strokes several hours after onset can significantly aid the stroke care pathway. Improved speed and/or accuracy of identification of those individuals who present with stroke symptoms who are or who have suffered a LVO stroke is very important to ensure that they are treated by MT, and achieve revascularisation.

However, ischemic and haemorrhagic stroke typically present with similar symptoms. In addition, different types of ischemic stroke can present with similar symptoms. Further to this, patients presenting with stroke-like symptoms may be suffering from a TIA or stroke mimic, and/or may be suffering from more than one pathology. These factors mean that accurate diagnosis of stroke type can be challenging.

Typically, diagnosis of stroke is achieved or informed using computerised tomography (CT) scan to the head. CT is highly accurate for detection of brain haemorrhages, but can be very inaccurate for detection of ischemic stroke, and LVO stroke specifically. An MRI scan may also be carried out, to aid with diagnosis of ischemic stroke and ischemic stroke type. If LVO stroke is suspected, the patient typically undergoes a further procedure, called CT angiography. Examination of CTA and/or MRI images by a neuroradiologist are then required in order to diagnose LVO stroke.

Diagnosis of LVO stroke in an individual presenting with stroke symptoms can therefore be a lengthy procedure, and requires expert (neuroradiological) input. A delay in diagnosis and treatment negatively impacts on patient outcome. A diagnostic which is able to identify or aid identification of individuals who have suffered an LVO stroke could speed up treatment of these patients, thereby reducing death and disability rates.

Several studies have investigated the ability of clinical scores based on patient symptoms to aid in the diagnosis of LVO strokes⁵⁻¹⁰. Such clinical scores are generally based on a simplified form of the widely applied national institute of health stroke scale (NIHSS) system, but none of them has shown improved diagnostic performance compared to the NIHSS system for the identification of LVO strokes¹¹. Although the NIHSS system has shown promising results in the identification of LVO strokes¹², cut-off values applied to a real clinical scenario have shown poor diagnostic performance¹³. This indicates that clinical scores alone are not sufficient to diagnose LVO stroke.

Several documents report the use of biomarker measurements for differential diagnosis of stroke subtype. WO2012009567 describes the measurement of an expression profile to determine whether a patient is suffering an ischemic stroke. WO2016087611 describes a method for the differentiation of ischemic and haemorrhagic stroke subtypes by measurement of a panel of blood biomarkers. Other studies have assessed the ability of blood biomarkers to differentiate between stroke subtypes and aid in the acute stroke diagnosis. Sharma et al measured 262 proteins and found that a panel of 5 proteins could distinguish between any stroke type and mimics¹⁴, but no biomarker was suggested for differentiation between stroke subtypes. Bustamante et al tested a panel of 21 biomarkers for the differentiation between stroke and mimics, as well as between ischemic stroke and haemorrhagic stroke¹⁵. Their study concluded that the tested biomarkers were not sufficient for an accurate diagnosis of stroke, or stroke subtype, in the acute clinical setting. Other studies have attempted to identify biomarkers for the diagnosis of LVO strokes. Wang et al found a significant association between plasma soluble CD40L/P-selectin and LVO stroke patients¹⁶. Arenillas and colleagues observed increased amounts of blood c-reactive protein (CRP) in patients with intracranial large-artery occlusive strokes¹⁷. Chang et al reported association between cardiac biomarkers and LVO strokes¹⁸. However, there is currently no means for diagnosing, specifically, stroke resulting from LVO.

SUMMARY OF THE INVENTION

In accordance with a first aspect, there is provided a method of diagnosing stroke as a result of a large vessel occlusion (LVO), comprising determining the amount of at least two biomarkers in a sample taken from an individual identified as or suspected of having or having had a stroke wherein the biomarker(s) are selected from: succinate, succinic-glutathione, N-acetyl-aspartate, propionyl-carnitine, glutamate, heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, osteoprotegerin (OPG), soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, bilirubin, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metalloproteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF), or P-selectin.

In accordance with a second aspect, there is a method of identifying, from a group of individuals identified as or suspected of having or having had a stroke, individuals who have suffered a stroke as a result of LVO, comprising determining the amount of at least two biomarkers in a sample taken from each individual, wherein the biomarkers are selected from: succinate, succinic-glutathione, N-acetyl-aspartate, propionyl-carnitine, glutamate, heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, osteoprotegerin (OPG), soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, bilirubin, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metallo-proteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF) or P-selectin.

In some embodiments methods comprise determining the amount of at least three, at least four, at least five, at least six, at least seven, at least eight, at least nine, at least 10, at least eleven, or 12 or more biomarkers.

In some embodiments the methods comprise comparing the amount of each biomarker in the sample taken from the or each individual identified as or suspected of having or having had a stroke to the amount of the same biomarker in one or more of a control, a positive standard, one or more positive references or a negative reference.

In some embodiments the individual is diagnosed as having or having had a stroke as a result of LVO when the amount of one or more of the measured biomarkers differs from the amount of the same biomarker in a control; or is comparable to the amount of the same biomarker in a positive standard.

In some embodiments the methods comprise transforming the amount of one or more biomarkers measured in the sample taken from an or each individual identified as or suspected of having or having had a stroke into an LVO stroke score.

In some embodiments, the methods comprise comparing the LVO stroke score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke to an LVO stroke score created using biomarker amounts from a control, or from a positive standard.

In some embodiments the individual is diagnosed as having or having had a stroke as a result of LVO when the LVO stroke score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke is comparable to an LVO stroke score created using biomarker amounts from a positive standard; or when the LVO stroke score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke differs from the LVO stroke score created using biomarker amounts from a control.

In some embodiments, the sample from the individual is one or more of blood, plasma, cerebrospinal fluid or saliva.

In some embodiments, the amount of biomarker is determined using an agent that binds to the biomarker. In some such embodiments the detection and/or quantification of the amount of biomarker or biomarkers comprises the use of ELISA. In some such embodiments the detection and/or quantification of the amount of biomarker or biomarkers comprises the use of a lateral flow assay.

In some embodiments the method further comprises consideration of data and/or information from one or more clinical assessments which the individual has undergone. In some such embodiments the clinical assessment is one or more of a CT or CTA scan, MRA or MRI scan, or the individual's NIHSS, FAST, ABCD, ABCD2 Rosier, TOAST, EMSA, PASS, VAN, RACE, FAST_ED or CPSS score.

In some embodiments, the amount of biomarker in the sample taken from the individual identified as or suspected of having or having had a stroke is determined using an agent that binds to the biomarker, preferably wherein the amount of biomarker is determined using ELISA or lateral flow.

In some embodiments, the method is carried out within about 24 hours of onset of stroke symptoms in the individual. In some embodiments, the method is carried out within about 17 hours of onset of stroke symptoms in the individual. In some embodiments, the method is carried out within about 6 hours of onset of stroke symptoms in the individual.

In accordance with a third aspect, there is provided the use of two or more biomarkers to detect stroke resulting from large vessel occlusion, wherein the biomarkers are selected from: succinate, succinic-glutathione, N-acetyl-aspartate, propionyl-carnitine, glutamate, heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, OPG, soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, bilirubin, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metallo-proteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF), osteoprotegerin (OPG) or P-selectin.

In some embodiments, at least three, at least four, at least five, at least six, at least seven, at least eight, at least nine, at least ten, at least eleven or twelve or more biomarkers are used to identify stroke resulting from large vessel occlusion.

In a sixth aspect there is provided a kit for carrying out a method according to the first or second aspect of the invention comprising one or more of: a container for holding a sample from the individual identified as or suspected of having or having had a stroke; a means for determining the amount of the target biomarker(s); and instructions on how to carry out the reaction between the sample and the means provided so as to determine the amount of the target biomarker(s).

DETAILED DESCRIPTION

It has been found that detection of certain amounts of specific biomarkers in a sample from an individual can determine or inform the decision as to whether the individual has suffered a stroke resulting from LVO.

Accordingly, in a first aspect there is provided a method of diagnosing stroke as a result of a large vessel occlusion (LVO) comprising determining the amount of at least two biomarkers in a sample taken from an individual identified as or suspected of having or having had a stroke, wherein the biomarker are selected from: succinate, succinic-glutathione, N-acetyl-aspartate, propionyl-carnitine, glutamate, heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, OPG, soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, bilirubin, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metallo-proteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF), osteoprotegerin (OPG) or P-selectin.

The phrase ‘stroke as a result of large vessel occlusion (LVO)’, also referred to herein as ‘LVO stroke’ means stroke resulting from occlusion of one or more of the common carotid artery, basilar artery, vertebral artery, middle cerebral artery, anterior cerebral artery, posterior cerebral artery, external carotid artery, internal carotid artery and/or anterior cerebral arteries.

As used herein, the phrase “an individual suspected of having or having had a stroke” refers to an individual presenting with one or more signs or symptoms associated with stroke. This can include an individual suffering from a TIA or stroke mimic. The phrase “an individual identified as having or having had a stroke” as used herein indicates an individual presenting with one or more signs or symptoms associated with stroke who has, in addition, been diagnosed as having or having had a stroke.

Signs or symptoms associated with stroke include arm drift, sudden-onset face weakness, hemiplegia and muscle weakness of the face, abnormal speech as well as combination thereof such as the FAST test, reduction in sensory or vibratory sensation, numbness, initial flaccidity (hypotonicity), replaced by spasticity (hypertonicity), obligatory synergies and, in particular, when they appear in one side of the body (unilateral), altered smell, taste, hearing, or vision (total or partial), hyperreflexia, decreased reflexes (e.g. gag, swallow, pupil reactivity to light), decreased sensation and muscle weakness of the face, drooping of eyelid (ptosis) and weakness of ocular muscles, balance problems and nystagmus, aphasia, dysarthria, apraxia, altered breathing and heart rate, atrial fibrillation, weakness in sternocleidomastoid muscle with inability to turn head to one side, weakness in tongue (inability to protrude and/or move from side to side), visual field defect, hemineglect, disorganized thinking, memory deficits, confusion, lack of insight of his or her, usually stroke-related, disability, altered movement coordination, altered walking gait, vertigo, hypersexual gestures, headache and or disequilibrium.

The method may be performed in vivo, in vitro or ex vivo. Preferably, the method is performed in vitro or ex vivo. Most preferably, the method is performed in vitro.

In some embodiments the method comprises determining the amount of at least three, at least four, at least five, at least six, at least seven, at least eight, at least nine, at least 10, at least eleven, or 12 or more biomarkers.

As described in the Examples and shown in FIGS. 2A and 3 , the inventors have shown for the first time that the biomarkers OPN, OPG, and D-dimer are surprisingly effective in determining whether a subject has suffered from stroke as a result of a large vessel occlusion (LVO).

Thus, preferably, the method comprises determining the amount of at least one of the biomarkers selected from: D-dimer, OPN and OPG. More preferably, the method comprises determining the amount of at least two of the biomarkers selected from: D-dimer, OPN and OPG. Most preferably, the method comprises determining the amount of D-dimer, OPN and OPG.

Preferably, the method comprises determining the amount of D-dimer. Preferably, the method comprises determining the amount of OPN. Preferably, the method comprises determining the amount of OPG.

The inventor's further work has shown that inclusion of the additional biomarker, GFAP, results in even greater accuracy in diagnosing stroke as a result of a large vessel occlusion (LVO), as summarised in FIG. 5 and FIG. 14 The findings suggest that inclusion of GFAP in the biomarker panel could help to rule out haemorrhagic stroke from the population of suspected stroke patients.

Accordingly, preferably, the method comprises determining the amount of at least one of the biomarkers selected from: D-dimer, OPN, OPG and GFAP. More preferably, the method comprises determining the amount of at least two of the biomarkers selected from: D-dimer, OPN, OPG and GFAP. Even more preferably, the method comprises determining the amount of at least three of the biomarkers selected from: D-dimer, OPN, OPG and GFAP. Most preferably, the method comprises determining the amount of biomarkers: D-dimer, OPN, OPG and GFAP.

As shown in FIG. 14 , surprisingly the specific combination of D-dimer with GFAP results in a specificity of diagnosis of over 90%.

Accordingly, preferably the method comprises determining the amount of D-dimer and GFAP.

In one embodiment, the D-dimer protein sequence may be represented by the Entrez GeneID: 2243 which is provided herein as SEQ ID No: 1, as follows:

[SEQ ID No: 1] MFSMRIVCLV LSVVGTAWTA DSGEGDFLAE GGGVRGPRVV ERHQSACKDSDWPFCSDEDW NYKCPSGCRM KGLIDEVNQD FTNRINKLKN SLFEYQKNNK DSHSLTTNIM EILRGDFSSA NNRDNTYNRV SEDLRSRIEV LKRKVIEKVQ HIQLLQKNVR AQLVDMKRLE VDIDIKIRSC RGSCSRALAR EVDLKDYEDQ QKQLEQVIAK DLLPSRDRQH LPLIKMKPVP DLVPGNFKSQ LQKVPPEWKA LTDMPQMRME LERPGGNEIT RGGSTSYGTG SETESPRNPS SAGSWNSGSS GPGSTGNRNP GSSGTGGTAT WKPGSSGPGS TGSWNSGSSG TGSTGNQNPG SPRPGSTGTW NPGSSERGSA GHWTSESSVS GSTGQWHSES GSFRPDSPGS GNARPNNPDW GTFEEVSGNV SPGTRREYHT EKLVTSKGDK ELRTGKEKVT SGSTTTTRRS CSKTVTKTVI GPDGHKEVTK EVVTSEDGSD CPEAMDLGTL SGIGTLDGFR HRHPDEAAFF DTASTGKTFP GFFSPMLGEF VSETESRGSE SGIFTNTKES SSHHPGIAEF PSRGKSSSYS KQFTSSTSYN RGDSTFESKS YKMADEAGSE ADHEGTHSTK RGHAKSRPVR DCDDVLQTHP SGTQSGIFNI KLPGSSKIFS VYCDQETSLG GWLLIQQRMD GSLNFNRTWQ DYKRGFGSLN DEGEGEFWLG NDYLHLLTQR GSVLRVELED WAGNEAYAEY HFRVGSEAEG YALQVSSYEG TAGDALIEGS VEEGAEYTSH NNMQFSTFDR DADQWEENGA EVYGGGWWYN NCQAANLNGI YYPGGSYDPR NNSPYEIENG VVWVSFRGAD YSLRAVRMKI RPLVTQ

Accordingly, preferably D-dimer comprises or consists of an amino acid sequence substantially as set out in SEQ ID NO: 1, or a fragment or variant thereof.

In one embodiment, D-dimer may be encoded by a nucleotide sequence which is provided herein as SEQ ID No: 2, as follows:

[SEQ ID No: 2] AATCCTTTCTTTCAGCTGGAGTGCTCCTCAGGAGCCAGCCCCACCCTTAG AAAAGATGTTTTCCATGAGGATCGTCTGCCTGGTCCTAAGTGTGGTGGGC ACAGCATGGACTGCAGATAGTGGTGAAGGTGACTTTCTAGCTGAAGGAGG AGGCGTGCGTGGCCCAAGGGTTGTGGAAAGACATCAATCTGCCTGCAAAG ATTCAGACTGGCCCTTCTGCTCTGATGAAGACTGGAACTACAAATGCCCT TCTGGCTGCAGGATGAAAGGGTTGATTGATGAAGTCAATCAAGATTTTAC AAACAGAATAAATAAGCTCAAAAATTCACTATTTGAATATCAGAAGAACA ATAAGGATTCTCATTCGTTGACCACTAATATAATGGAAATTTTGAGAGGC GATTTTTCCTCAGCCAATAACCGTGATAATACCTACAACCGAGTGTCAGA GGATCTGAGAAGCAGAATTGAAGTCCTGAAGCGCAAAGTCATAGAAAAAG TACAGCATATCCAGCTTCTGCAGAAAAATGTTAGAGCTCAGTTGGTTGAT ATGAAACGACTGGAGGTGGACATTGATATTAAGATCCGATCTTGTCGAGG GTCATGCAGTAGGGCTTTAGCTCGTGAAGTAGATCTGAAGGACTATGAAG ATCAGCAGAAGCAACTTGAACAGGTCATTGCCAAAGACTTACTTCCCTCT AGAGATAGGCAACACTTACCACTGATAAAAATGAAACCAGTTCCAGACTT GGTTCCCGGAAATTTTAAGAGCCAGCTTCAGAAGGTACCCCCAGAGTGGA AGGCATTAACAGACATGCCGCAGATGAGAATGGAGTTAGAGAGACCTGGT GGAAATGAGATTACTCGAGGAGGCTCCACCTCTTATGGAACCGGATCAGA GACGGAAAGCCCCAGGAACCCTAGCAGTGCTGGAAGCTGGAACTCTGGGA GCTCTGGACCTGGAAGTACTGGAAACCGAAACCCTGGGAGCTCTGGGACT GGAGGGACTGCAACCTGGAAACCTGGGAGCTCTGGACCTGGAAGTACTGG AAGCTGGAACTCTGGGAGCTCTGGAACTGGAAGTACTGGAAACCAAAACC CTGGGAGCCCTAGACCTGGTAGTACCGGAACCTGGAATCCTGGCAGCTCT GAACGCGGAAGTGCTGGGCACTGGACCTCTGAGAGCTCTGTATCTGGTAG TACTGGACAATGGCACTCTGAATCTGGAAGTTTTAGGCCAGATAGCCCAG GCTCTGGGAACGCGAGGCCTAACAACCCAGACTGGGGCACATTTGAAGAG GTGTCAGGAAATGTAAGTCCAGGGACAAGGAGAGAGTACCACACAGAAAA ACTGGTCACTTCTAAAGGAGATAAAGAGCTCAGGACTGGTAAAGAGAAGG TCACCTCTGGTAGCACAACCACCACGCGTCGTTCATGCTCTAAAACCGTT ACTAAGACTGTTATTGGTCCTGATGGTCACAAAGAAGTTACCAAAGAAGT GGTGACCTCCGAAGATGGTTCTGACTGTCCCGAGGCAATGGATTTAGGCA CATTGTCTGGCATAGGTACTCTGGATGGGTTCCGCCATAGGCACCCTGAT GAAGCTGCCTTCTTCGACACTGCCTCAACTGGAAAAACATTCCCAGGTTT CTTCTCACCTATGTTAGGAGAGTTTGTCAGTGAGACTGAGTCTAGGGGCT CAGAATCTGGCATCTTCACAAATACAAAGGAATCCAGTTCTCATCACCCT GGGATAGCTGAATTCCCTTCCCGTGGTAAATCTTCAAGTTACAGCAAACA ATTTACTAGTAGCACGAGTTACAACAGAGGAGACTCCACATTTGAAAGCA AGAGCTATAAAATGGCAGATGAGGCCGGAAGTGAAGCCGATCATGAAGGA ACACATAGCACCAAGAGAGGCCATGCTAAATCTCGCCCTGTCAGAGACTG TGATGATGTCCTCCAAACACATCCTTCAGGTACCCAAAGTGGCATTTTCA ATATCAAGCTACCGGGATCCAGTAAGATTTTTTCTGTTTATTGCGATCAA GAGACCAGTTTGGGAGGATGGCTTTTGATCCAGCAAAGAATGGATGGATC ACTGAATTTTAACCGGACCTGGCAAGACTACAAGAGAGGTTTCGGCAGCC TGAATGACGAGGGGGAAGGAGAATTCTGGCTAGGCAATGACTACCTCCAC TTACTAACCCAAAGGGGCTCTGTTCTTAGGGTTGAATTAGAGGACTGGGC TGGGAATGAAGCTTATGCAGAATATCACTTCCGGGTAGGCTCTGAGGCTG AAGGCTATGCCCTCCAAGTCTCCTCCTATGAAGGCACTGCGGGTGATGCT CTGATTGAGGGTTCCGTAGAGGAAGGGGCAGAGTACACCTCTCACAACAA CATGCAGTTCAGCACCTTTGACAGGGATGCAGACCAGTGGGAAGAGAACT GTGCAGAAGTCTATGGGGGAGGCTGGTGGTATAATAACTGCCAAGCAGCC AATCTCAATGGAATCTACTACCCTGGGGGCTCCTATGACCCAAGGAATAA CAGTCCTTATGAGATTGAGAATGGAGTGGTCTGGGTTTCCTTTAGAGGGG CAGATTATTCCCTCAGGGCTGTTCGCATGAAAATTAGGCCCCTTGTGACC CAATAGGCTGAAGAAGTGGGAATGGGAGCACTCTGTCTTCTTTGCTAGAG AAGTGGAGAGAAAATACAAAAGGTAAAGCAGTTGAGATTCTCTACAACCT AAAAAATTCCTAGGTGCTATTTTCTTATCCTTTGTACTGTAGCTAAATGT ACCTGAGACATATTAGTCTTTGAAAAATAAAGTTATGTAAGGTTTTTTTT ATCTTTAAATAGCTCTGTGGGTTTTAACATTTTTATAAAGATATACCAAG GGCCATTCAGTACATCAGGAAAGTGGCAGACAGAAGCTTCTCTCTGCAAC CTTGAAGACTATTGGTTTGAGAACTTCTCTTCCCATACCACCCAAAATCA TAATGCCATTGGAAAGCAAAAAGTTGTTTTATCCATTTGATTTGAATTGT TTTAAGCCAATATTTTAAGGTAAAACTCACTGAATCTAACCATAGCTGAC CTTTGTAGTAGAATTTACAACTTATAATTACAATGCACAATTTATAATTA CAATATGTATTTATGTCTTTTGCTATGGAGCAAATCCAGGAAGGCAAGAG AAACATTCTTTCCTAAATATAAATGAAAATCTATCCTTTAAACTCTTCCA CTAGACGTTGTAATGCACACTTATTTTTTTCCCAAGGAGTAACCAATTTC TTTCTAAAACACATTTAAAATTTTAAAACTATTTATGAATATTAAAAAAA GACATAATTCACACATTAATAAACAATCTCCCAAGTATTGATTTAACTTC ATTTTTCTAATAATCATAAACTATATTCTGTGACATGCTAATTATTATTA AATGTAAGTCGTTAGTTCGAAAGCCTCTCACTAAGTATGATCTATGCTAT ATTCAAAATTCAACCCATTTACTTTGGTCAATATTTGATCTAAGTTGCAT CTTTAATCCTGGTGGTCTTGCCTTCTGATTTTTAATTTGTATCCTTTTCT ATTAAGATATATTTGTCATTTTCTCTTGAATATGTATTAAAATATCCCAA GCAA

Accordingly, preferably D-dimer comprises or consists of a nucleotide sequence substantially as set out in SEQ ID NO: 2, or a fragment or variant thereof.

In one embodiment, the OPN protein sequence may be represented by the Entrez GeneID: 6696 which is provided herein as SEQ ID No: 3, as follows:

[SEQ ID No: 3] MRIAVICFCL LGITCAIPVK QADSGSSEEK QLYNKYPDAV ATWLNPDPSQ KQNLLAPQNA VSSEETNDFK QETLPSKSNE SHDHMDDMDD EDDDDHVDSQ DSIDSNDSDD VDDTDDSHQS DESHHSDESD ELVTDFPTDL PATEVFTPVV PTVDTYDGRG DSVVYGLRSK SKKFRRPDIQ YPDATDEDIT SHMESEELNG AYKAIPVAQD LNAPSDWDSR GKDSYETSQL DDQSAETHSH KQSRLYKRKA NDESNEHSDV IDSQELSKVS REFHSHEFHS HEDMLVVDPK SKEEDKHLKF RISHELDSAS SEVN

Accordingly, preferably OPN comprises or consists of an amino acid sequence substantially as set out in SEQ ID NO: 3, or a fragment or variant thereof.

In one embodiment, OPN may be encoded by a nucleotide sequence which is provided herein as SEQ ID No: 4, as follows:

[SEQ ID No: 4] AGCAGCAGGAGGAGGCAGAGCACAGCATCGTCGGGACCAGACTCGTCTCAGGCCAGTTGCAGCCTTCTCA GCCAAACGCCGACCAAGGTACAGCTTCAGTTTGCTACTGGGTTGTGCATTCAGCTGAATTTCATGGGGAA GTCCAAATTCTAAGGAAAAATATTTTTAATTGTAATGCTGTTAAACAGACTTAAATTTTCTAGCCTTTTT AATAAGCAGATTAGATACATTGCAGGTCTCCTGGAACAAAGGTGTCTAGATATTTTGAATGCCAATCAAA TTTAAAACTTAAAAATACTTCCACTGGGTCCTCAAAAGAACGGAAACCACCGATGCTAATCAGAAAATAG TAAAATTAAATTCCCCTTTGGAATAATTATACCTATATAATTTTCAGTGGGTGACTGTGCAGGAATTTAA AAGAAAAGGGATCTTTTATGCTAATTAAACCAATTACAATGCTATTTTTTAAATGATGTATCTCACTTTT AAGGGGAAGAAAACCCTTTCTGAATATGCCACTGCTAAATTTAGCTGTTAAAATATTCACCAAGATACCT GTATGACACTGTGTAGGCTTATTATTACAAATAGAAAAGCTGTTGGCTATTTTCAATGTTTTCCTTTGAA TTTCAAATTTTTAGAACATCTTACTTAAATAACAAATTTCAGAGATAGTTTGATTTCACCTAAGTAGCAC CTACTTGATAATTAAGCTAAAAGTCACATTTAAAGTACATGTTGGAAAAATGGATAAAGCAAATTTTTTT CATTTTTTTCTGTGAGTTTTTTCTTCTCTAAAAAATATTCCCATACTAGCTTATTAATATAATTAAGTTA CTGTTGATCTGTTTGTAGGTTTAGAGAGCTAGATATATAAGGTAGTAATGGTATAATTTCTGGAACTCTA AATTTTAAAGTTGAATAAATACAGACTTGCAAAATTTCCCTTTCCCTTGCCTAATAGTGAAAGATGGATA ATAGGTGGCAATATAAATATTAACTTGAAAGACTATAATACTAAAAAGAAAAGGCATCTCTAAGAAGTAG AAAAGATTCTATAGAAAATATATTTTATTTGTGATCATTTTGTAATGTGGTAGTATAAAAAGGTATCACT GTTGTAACCTATGAAGATGTCAGCTATTCCTTATGAAATATTTTGCAGGAAAACTCACTACCATGAGAAT TGCAGTGATTTGCTTTTGCCTCCTAGGCATCACCTGTGCCATACCAGTGAGTACAGTTGCATCTTAAAGA AAATTCCTGAAAATAACTGAATTGTGTGCTTCCATGTGCTAGGAGGACATTCTTGTAATCTTTCTTCATC TTTTCTGTTTCTAAGGTTAAACAGGCTGATTCTGGAAGTTCTGAGGAAAAGCAGGTAAGCATCTTTTATG TTTTTATATAGTTAAATCATTTACTCAATTATGGCGAGAGGTGCAAGAAACGTATTTGCTGCGATATTAC TTATCTTCTCAGTCAAATCCATTGGTTTACAAGTATTGATTGACTGCCTGCTATGAATCTAGGCCAGTAC CAAGCACAGTATAGTTTTTAATAAATATAAGTTTATAAAACCAACCCAGATATTTTAAATATAATAATAT CTAGGCATGTATGATGAGTTATCGCATGTAAGATAAGTTATATGAAGTTGTGTGACTTTTTTTCCATTAG TCCACATACTGATCTAAAAGCAGAAAATTCCAGCTTTTGCTTTGTTTAGTGGATTGCTAAGTTTAAAATT CACATTGGATATTAGTCAGAACTGTTTGTATGACCATAATATTCACAATATTGTCTGAGATATTAGCTGA GAAGCCCATTGTGAAAAGAAAGTCTATGTGTGCTGTTTGTATCTATTGTGATTGTCAGCTGATGTTAGAT CACATTTTCTAACCAAACATAAGACCAACCAAACTCTTTATTATAATTATTTGACCAGCACTAAAGATGT ACCTACCCCTCCACAACAGATGAAACTGTGCCAGCCAAACAACAAATGGGCATTGTCCCCAGAAGCTTGG ACAAAAAGGCACACAGAGTTCAATTCCAGTTGAACAGAATAAAGGCCAAAATAGAGCTGCCTTGGGGGTC ACTGCAATTAGACTGCTTAATGAAGACATTAAAAGAAGTATTCTGTGTTCGTTTGTGTGTGGAGGGGTGT GTGTGTCTGTTTTTCAACTGATTTGAAAATACAGGTGTTGAATCCTAATAATAAACCAGAAAAATTAACA TCTCCAGAGAAGATAGAGGTCATACTATTTGAGGCAAGAATTAGCGTCTTTTTAATAAACGAAAATATGG CAAAGATGCATTTTAGAAGGCACGTGGAGCTATAACAATTTAAGAAATACGTGAAGAGCTCAAGGCTCAG CCTTCTAGAATCCCAGAAACTTAAAGCTAGTAAAAAATTGGGGAAGTCTCTAAGGATATATGCCTGAAAA TACACACTGGTTATCTGTGAGTGTTAGGATTACTGGGTGGTTTTTAGTCTATTCATTTTGCTTACCTTTA TTTTCTTCATATTAGTTTTTAAAAATTATAAATGTAACTTATACATCCATTCTCTCTGAGCCTGTATTAC ATGTGTCATGAGAATAGATAGATAGATATGAAAAAGTGAAGAGAAAAACTCTGAACTCATCTGGTCTCAC TGTTTTTCCGCCTTCTTTTTTTTTTTTTTTTTTTTTTTTTGAGACGGAGTCTCGCTCCGTCGCCCAGGCT GGAGTGCAGTGGTGTGATCTCGGCTCACTGCAAGCTCCGCCTCCCAGGTTCACCCCATTCTCCTGAGTAG CTGGGACTACAGGCGCCCGCCACCACGCCCGGATAATTTTTTGTATTTTTAGTAGAGACGGGGTTTCACC GTGTTAGCCAGGATGGTCTCCATCTCCTGACCTCGTGATCCACCCTCCTTGGCCTCCCAAAGTGCTGGGA TTACAGGCGTGAGCCACTGCGCCCGGCTGTTTTTTCATCTTCTTAAAGCAAGGAACCCCTTCTTTCAGCA AAACCTTTCGGAGAAGCCCAATACTAAGCTCCTCTGGTTAGAGCCAGCCATGAGAGAAACTCCAAGTACT TCTGACTGGTTCTCTCTCTACTCATCCACCCCTTAGGTGGCTGCAGAAGGAACTCTGTGCAACCCCCAGA GTTCTCATTCTCAGTGACAGGGAAATGTAATGATTGGCCCTGGATGATTCAGCAGATCAGATGATACTTA CTCAGAGCAATTTCCACTCCTTTGCAGTAGCATATTATCAGTATTTTCCAGATAAATAACTTGGCTAAAG AAAAATCCATTTCATTTACATCTTTGGCACCTTACAGCAATAGAACTTTTGTGCAATGATTTTAATATTA TATTTCTACATTGGCTGATAAGATACATATGGCTATTGAGCACTCAAAATGTGGGCTAGTGCAACTGAGG AACTGAATTTTTATCTTCTTTTTTTTTTTTTTTTTTTTTGAGATGGAGTCTTGCTCTGTCACCCAGGCTG GAGTGCAGTGGCGCAATCTTGGCTCACTGCAAGCTCTGCCTCCTGGGTTCACGCCATTCTCTTGCCTCAG CCTCCCCAGTAGCTGGGGGTACAGGTGCCTGCCACCACGCCCGGCTATTTTTTTTTATTTTTATTTTTTT TAGTAGAAACGGGGTTTCACTGTGTTAGCCAGGATGTTCTCGATCTCCTGACCTCGTGATCCGCCTGCCT CGGCCTCCCAAAGTGCTGGGATTACAGGGGTGAGCCACCGTGCCTAGCCATTTCATTTTAATTAACTTAA ATTTAAATAGCTCCATGTGGTTAGAGGATACTGAATTAGCACAGTCTTAGAGAGTTCCTTCTTGTTCCAT GGACTGGACACAATGAAGATTAACAGTAATTAAGGTCACTTCTGGTTTAGATGTGCTTTATCTGAGAGGA AAATTCAGCCAGCAAACATACAAAAAGAAAGCACAGTGTGAAGTTCGGTGTTAAGAGCTAGTTTGCCTGC GTTTGAACCCTGCCTGGCTCTGCCATTTCCTACCACTTAACTGCACTGTGGCTGAGTTTTCTGATCTGTA AGGTGGGAATAATAATGATACCTATCTCATAGGGGAATGAAAGGATCAAATGAGTTCATATTTGTAAAGC AATTTGAAAGAGTGCCTAGCCCACAGTAAGTGCTACATAAGAGTTTGTTAAATGAATCTGCAAAAAAAAA AAAATTACAAAAAGGTACCTAAGGGTCCGGGTGACTATATGCTTCCATCAAGACTAGTGAAGAATGGTTG TTTTTTCCATTCATCCCTACATTTCTTTTTTTAATAATGATAAACATGCAACTTTTTTGTAGCTTTACAA CAAATACCCAGATGCTGTGGCCACATGGCTAAACCCTGACCCATCTCAGAAGCAGAATCTCCTAGCCCCA CAGGTATTTTTAAACTTCTCATAATTAAACTACAGTGATGAAAGATAGCCACACTCAGGCCATTTGGGCT GCTCAGATGAATCCTGCCTGCCTGCTGGCAAACATGTGCTTAGGACATTGACTGATCTGCCATGTTGGCT TCTCTCTGTGTTAAGCCATCCACAGATGAGGCTGAAAAATAAAAACTGCTTTGGATTAAAAAGGTTAACT TTTGAATAAAAAAGCTAGGCATGTGTGATGCGCACTAACACGTGCCATTCCTTCTTCAGAATGCTGTGTC CTCTGAAGAAACCAATGACTTTAAACAAGAGGTAAGTTCTCATTTTCAATCAGAGGCCCATCATGCCTTG AAGAGATGAAAGAAGGCATTGCCTGGATTCTCTTCTGATGAAATTTCATTAGCAAGTTTTCCAGCTAATT GGCAGTCTAAAACTTGCTCATAAATAAAACATGTATTTACTAAATATCAGAAATACTAGGTTTCCTCGGA TAAGTTTAGCATTACAGAAGATGTTTATTAATGCCTGTTATTTGAAACATTAATCTGCTTGCAATTTATT TAAGGTATTTTGTAGATATCTAATATCTAATAAGCATCTAATTAATGCATATCAAAGCTAAGATTTTGCC TTTAGGAAAGTTTTCTTTCCTAATAAAATAGTTTATTTGACAACTATTCTTTTTATTAGGATCATTCATA TATTTGCTAAGCAAAGAGTAAATTTATTTTCCTTAAGATTCAATTTGAATATACTAAGAATATTAAAGCA AGTTAGATAAATTACCCAATATATTTGTCAATTTGAAATTTGATAGACATTAGTTGTTTAATTCAATGGG CAGTTTTGAGCTGCAGTTTATACACACATGCATAACAGAGTCACCTTTCAATTATCCATGTTAATAGGAA AGTGGTTATAGATTTTAGTACACACATTAAAATATGGATACTCTTCTCTTTTGATAAATCTCATTTCAAA TAAAAAAACCAGTCTCATAATTATGTATCTGTATCTATTACATCATTGAATTTAGTAAATAATGTTTAAT ATGTATAAGGAAAAACAATGTTATTGACATGAAGATTATACTCACATATTTGGCTTGAAAATATCTATAA AAATAATTTCTGTTGCAAAGTAAGAAATGTTCTTCAGAATGTTATTAATCCCTGTGTTAAAAGAGAAATT GGAAGATGCTCACTTTAGCTCCTAAAAGCCATGGTATGTACTGTGAATGCAAAGATTCTGAAACTAAATA AAAAGAAAGATAGTAAAAGACTAATGTGCTATAAAGGCTAAGGGAAAATAAAAACCCATATATTAATTTT CCCGGCCATCTTAATTTTCAGACCCTTCCAAGTAAGTCCAACGAAAGCCATGACCACATGGATGATATGG ATGATGAAGATGATGATGACCATGTGGACAGCCAGGACTCCATTGACTCGAACGACTCTGATGATGTAGA TGACACTGATGATTCTCACCAGTCTGATGAGTCTCACCATTCTGATGAATCTGATGAACTGGTCACTGAT TTTCCCACGGACCTGCCAGCAACCGAAGTTTTCACTCCAGTTGTCCCCACAGTAGACACATATGATGGCC GAGGTGATAGTGTGGTTTATGGACTGAGGTCAAAATCTAAGAAGTTTCGCAGACCTGACATCCAGGTAAA TCCTTTAACAGACACACCTGATGGTTCTGACTAGCGCTCAAGTCTAGGAAACCACAGTTTGCATATTCAT TCATTCATTCATCCATTCATTCATCCATTCAGCAAGAATTCATTCATATTCTACTTTATGACCATTGAAT ACAAATCTTTTTCTGCTTGGCGGTTTTTGTAAGTCTACATAATTTCTCTCTAGATTTGATTCTCAAACAC AATTCTACTTTTTGAAATCCTGGATCACTTATTTTCAGATTAAAATAAATGGAAAACACCAATTATTTAA AAAAAATAATGGTCATGTTTTGAAGTTAAATACCTAAGAGGAATTGTAGTTGCAAATTACACTGAATCCT TAGTCACAGAATCTGGATTTGACATAGCCTTGCCGTTTACTATTCTCTTTACTTTTTAACTAACAATTCA CTTCCTCTTTATGTAGGTTTCAATATAATGAAACCTACCTCATAGGTTTCATTACATATGTAAGTGATGT AGTTATTAAACTAAATGAGATGACATATGTGAAAGGCCTTGGTAAAGTACTATACAAAGTAACATGCTAG TATTATTTCAGCCAGATTTAGACAATTTTTAGTATAAGATGACCTAAAAGCTAGAGAGTGGAAAAGGATT ACCATATTCCCATCCCTAGCCGTTCATATAATTATTCTTCATTTGTGCCGTGATTCAGTACCCTGATGCT ACAGACGAGGACATCACCTCACACATGGAAAGCGAGGAGTTGAATGGTGCATACAAGGCCATCCCCGTTG CCCAGGACCTGAACGCGCCTTCTGATTGGGACAGCCGTGGGAAGGACAGTTATGAAACGAGTCAGCTGGA TGACCAGAGTGCTGAAACCCACAGCCACAAGCAGTCCAGATTATATAAGCGGAAAGCCAATGATGAGAGC AATGAGCATTCCGATGTGATTGATAGTCAGGAACTTTCCAAAGTCAGCCGTGAATTCCACAGCCATGAAT TTCACAGCCATGAAGATATGCTGGTTGTAGACCCCAAAAGTAAGGAAGAAGATAAACACCTGAAATTTCG TATTTCTCATGAATTAGATAGTGCATCTTCTGAGGTCAATTAAAAGGAGAAAAAATACAATTTCTCACTT TGCATTTAGTCAAAAGAAAAAATGCTTTATAGCAAAATGAAAGAGAACATGAAATGCTTCTTTCTCAGTT TATTGGTTGAATGTGTATCTATTTGAGTCTGGAAATAACTAATGTGTTTGATAATTAGTTTAGTTTGTGG CTTCATGGAAACTCCCTGTAAACTAAAAGCTTCAGGGTTATGTCTATGTTCATTCTATAGAAGAAATGCA AACTATCACTGTATTTTAATATTTGTTATTCTCTCATGAATAGAAATTTATGTAGAAGCAAACAAAATAC TTTTACCCACTTAAAAAGAGAATATAACATTTTATGTCACTATAATCTTTTGTTTTTTAAGTTAGTGTAT ATTTTGTTGTGATTATCTTTTTGTGGTGTGAATAAATCTTTTATCTTGAATGTAATAAGAATTTGGTGGT GTCAATTGCTTATTTGTTTTCCCACGGTTGTCCAGCAATTAATAAAACATAACCTTTTTTACTGCCTA

Accordingly, preferably OPN comprises or consists of a nucleotide sequence substantially as set out in SEQ ID NO: 4, or a fragment or variant thereof.

In one embodiment, the OPG protein sequence may be represented by the Entrez Gene ID: 4982 which is provided herein as SEQ ID No: 5, as follows:

[SEQ ID No: 5] MNNLLCCALV FLDISIKWTT QETFPPKYLH YDEETSHQLL CDKCPPGTYLKQHCTAKWKT VCAPCPDHYY TDSWHTSDEC LYCSPVCKEL QYVKQECNRT HNRVCECKEG RYLEIEFCLK HRSCPPGFGV VQAGTPERNT VCKRCPDGFF SNETSSKAPC RKHTNCSVFG LLLTQKGNAT HDNICSGNSE STQKCGIDVT LCEEAFFRFA VPTKFTPNWL SVLVDNLPGT KVNAESVERI KRQHSSQEQT FQLLKLWKHQ NKDQDIVKKI IQDIDLCENS VQRHIGHANL TFEQLRSLME SLPGKKVGAE DIEKTIKACK PSDQILKLLS LWRIKNGDQD TLKGLMHALK HSKTYHFPKT VTQSLKKTIR FLHSFTMYKL YQKLFLEMIG NQVQSVKISC L

Accordingly, preferably OPG comprises or consists of an amino acid sequence substantially as set out in SEQ ID NO: 5, or a fragment or variant thereof.

In one embodiment, OPG may be encoded by a nucleotide sequence which is provided herein as SEQ ID No: 6, as follows:

[SEQ ID No: 6] GGAGACGCACCGGAGCGCTCGCCCAGCCGCCGCCTCCAAGCCCCTGAGGT TTCCGGGGACCACAATGAACAACTTGCTGTGCTGCGCGCTCGTGTTTCTG GACATCTCCATTAAGTGGACCACCCAGGAAACGTTTCCTCCAAAGTACCT TCATTATGACGAAGAAACCTCTCATCAGCTGTTGTGTGACAAATGTCCTC CTGGTACCTACCTAAAACAACACTGTACAGCAAAGTGGAAGACCGTGTGC GCCCCTTGCCCTGACCACTACTACACAGACAGCTGGCACACCAGTGACGA GTGTCTATACTGCAGCCCCGTGTGCAAGGAGCTGCAGTACGTCAAGCAGG AGTGCAATCGCACCCACAACCGCGTGTGCGAATGCAAGGAAGGGCGCTAC CTTGAGATAGAGTTCTGCTTGAAACATAGGAGCTGCCCTCCTGGATTTGG AGTGGTGCAAGCTGGAACCCCAGAGCGAAATACAGTTTGCAAAAGATGTC CAGATGGGTTCTTCTCAAATGAGACGTCATCTAAAGCACCCTGTAGAAAA CACACAAATTGCAGTGTCTTTGGTCTCCTGCTAACTCAGAAAGGAAATGC AACACACGACAACATATGTTCCGGAAACAGTGAATCAACTCAAAAATGTG GAATAGATGTTACCCTGTGTGAGGAGGCATTCTTCAGGTTTGCTGTTCCT ACAAAGTTTACGCCTAACTGGCTTAGTGTCTTGGTAGACAATTTGCCTGG CACCAAAGTAAACGCAGAGAGTGTAGAGAGGATAAAACGGCAACACAGCT CACAAGAACAGACTTTCCAGCTGCTGAAGTTATGGAAACATCAAAACAAA GACCAAGATATAGTCAAGAAGATCATCCAAGATATTGACCTCTGTGAAAA CAGCGTGCAGCGGCACATTGGACATGCTAACCTCACCTTCGAGCAGCTTC GTAGCTTGATGGAAAGCTTACCGGGAAAGAAAGTGGGAGCAGAAGACATT GAAAAAACAATAAAGGCATGCAAACCCAGTGACCAGATCCTGAAGCTGCT CAGTTTGTGGCGAATAAAAAATGGCGACCAAGACACCTTGAAGGGCCTAA TGCACGCACTAAAGCACTCAAAGACGTACCACTTTCCCAAAACTGTCACT CAGAGTCTAAAGAAGACCATCAGGTTCCTTCACAGCTTCACAATGTACAA ATTGTATCAGAAGTTATTTTTAGAAATGATAGGTAACCAGGTCCAATCAG TAAAAATAAGCTGCTTATAACTGGAAATGGCCATTGAGCTGTTTCCTCAC AATTGGCGAGATCCCATGGATGAGTAAACTGTTTCTCAGGCACTTGAGGC TTTCAGTGATATCTTTCTCATTACCAGTGACTAATTTTGCCACAGGGTAC TAAAAGAAACTATGATGTGGAGAAAGGACTAACATCTCCTCCAATAAACC CCAAATGGTTAATCCAACTGTCAGATCTGGATCGTTATCTACTGACTATA TTTTCCCTTATTACTGCTTGCAGTAATTCAACTGGAAATTAAAAAAAAAA AACTAGACTCCATTGTGCCTTACTAAATATGGGAATGTCTAACTTAAATA GCTTTGAGATTTCAGCTATGCTAGAGGCTTTTATTAGAAAGCCATATTTT TTTCTGTAAAAGTTACTAATATATCTGTAACACTATTACAGTATTGCTAT TTATATTCATTCAGATATAAGATTTGTACATATTATCATCCTATAAAGAA ACGGTATGACTTAATTTTAGAAAGAAAATTATATTCTGTTTATTATGACA AATGAAAGAGAAAATATATATTTTTAATGGAAAGTTTGTAGCATTTTTCT AATAGGTACTGCCATATTTTTCTGTGTGGAGTATTTTTATAATTTTATCT GTATAAGCTGTAATATCATTTTATAGAAAATGCATTATTTAGTCAATTGT TTAATGTTGGAAAACATATGAAATATAAATTATCTGAATATTAGATGCTC TGAGAAATTGAATGTACCTTATTTAAAAGATTTTATGGTTTTATAACTAT ATAAATGACATTATTAAAGTTTTCAAATTATTTTTTA

Accordingly, preferably OPG comprises or consists of a nucleotide sequence substantially as set out in SEQ ID NO: 6, or a fragment or variant thereof.

In one embodiment, the GFAP protein sequence may be represented by the Entrez Gene ID: 2670 which is provided herein as SEQ ID No: 7, as follows:

[SEQ ID No: 7] MERRRITSAA RRSYVSSGEM MVGGLAPGRR LGPGTRLSLA RMPPPLPTRV DFSLAGALNA GFKETRASER AEMMELNDRF ASYIEKVRFL EQQNAKLAAE LNQLRAKEPT KLADVYQAEL RELRLRDLQL TANSARLEVE RDNLAQDLAT VRQKLQDETN LRLEAENNLA AYRQEADEAT LARLDLERKI ESLEEEIRFL RKIHEEEVRE LQEQLARQQV HVELDVAKPD LTAALKEIRT QYEAMASSNM HEAEEWYRSK FADLTDAAAR NAELLRQAKH EANDYRRQLQ SLTCDLESLR GTNESLERQM REQEERHVRE AASYQEALAR LEEEGQSLKD EMARHLQYEQ DLLNVKLALD IEIATYRKLL EGEENRITIP VQTFSNLQIR ETSLDTKSVS EGHLKRNIVV KTVEMRDGEV IKESKQEHKD VM

Accordingly, preferably GFAP comprises or consists of an amino acid sequence substantially as set out in SEQ ID No: 7, or a fragment or variant thereof.

In one embodiment, GFAP may be encoded by a nucleotide sequence which is provided herein as SEQ ID No: 8, as follows:

[SEQ ID No: 8] AGAGCCAGAGCAGGATGGAGAGGAGACGCATCACCTCCGCTGCTCGCCGCTCCTACGTCTCCTCAGGGGA GATGATGGTGGGGGGCCTGGCTCCTGGCCGCCGTCTGGGTCCTGGCACCCGCCTCTCCCTGGCTCGAATG CCCCCTCCACTCCCGACCCGGGTGGATTTCTCCCTGGCTGGGGCACTCAATGCTGGCTTCAAGGAGACCC GGGCCAGTGAGCGGGCAGAGATGATGGAGCTCAATGACCGCTTTGCCAGCTACATCGAGAAGGTTCGCTT CCTGGAACAGCAAAACAAGGCGCTGGCTGCTGAGCTGAACCAGCTGCGGGCCAAGGAGCCCACCAAGCTG GCAGACGTCTACCAGGCTGAGCTGCGAGAGCTGCGGCTGCGGCTCGATCAACTCACCGCCAACAGCGCCC GGCTGGAGGTTGAGAGGGACAATCTGGCACAGGACCTGGCCACTGTGAGGCAGAAGCTCCAGGATGAAAC CAACCTGAGGCTGGAAGCCGAGAACAACCTGGCTGCCTATAGACAGGAAGCAGATGAAGCCACCCTGGCC CGTCTGGATCTGGAGAGGAAGATTGAGTCGCTGGAGGAGGAGATCCGGTTCTTGAGGAAGATCCACGAGG AGGAGGTTCGGGAACTCCAGGAGCAGCTGGCCCGACAGCAGGTCCATGTGGAGCTTGACGTGGCCAAGCC AGACCTCACCGCAGCCCTGAAAGAGATCCGCACGCAGTATGAGGCAATGGCGTCCAGCAACATGCATGAA GCCGAAGAGTGGTACCGCTCCAAGTTTGCAGACCTGACAGACGCTGCTGCCCGCAACGCGGAGCTGCTCC GCCAGGCCAAGCACGAAGCCAACGACTACCGGCGCCAGTTGCAGTCCTTGACCTGCGACCTGGAGTCTCT GCGCGGCACGAACGAGTCCCTGGAGAGGCAGATGCGCGAGCAGGAGGAGCGGCACGTGCGGGAGGCGGCC AGTTATCAGGAGGCGCTGGCGCGGCTGGAGGAAGAGGGGCAGAGCCTCAAGGACGAGATGGCCCGCCACT TGCAGGAGTACCAGGACCTGCTCAATGTCAAGCTGGCCCTGGACATCGAGATCGCCACCTACAGGAAGCT GCTAGAGGGCGAGGAGAACCGGATCACCATTCCCGTGCAGACCTTCTCCAACCTGCAGATTCGAGAAACC AGCCTGGACACCAAGTCTGTGTCAGAAGGCCACCTCAAGAGGAACATCGTGGTGAAGACCGTGGAGATGC GGGATGGAGAGGTCATTAAGGAGTCCAAGCAGGAGCACAAGGATGTGATGTGAGGCAGGACCCACCTGGT GGCCTCTGCCCCGTCTCATGAGGGGCCCGAGCAGAAGCAGGATAGTTGCTCCGCCTCTGCTGGCACATTT CCCCAGACCTGAGCTCCCCACCACCCCAGCTGCTCCCCTCCCTCCTCTGTCCCTAGGTCAGCTTGCTGCC CTAGGCTCCGTCAGTATCAGGCCTGCCAGACGGCACCCACCCAGCACCCAGCAACTCCAACTAACAAGAA ACTCACCCCCAAGGGGCAGTCTGGAGGGGCATGGCCAGCAGCTTGCGTTAGAATGAGGAGGAAGGAGAGA AGGGGAGGAGGGCGGGGGGCACCTACTACATCGCCCTCCACATCCCTGATTCCTGTTGTTATGGAAACTG TTGCCAGAGATGGAGGTTCTCTCGGAGTATCTGGGAACTGTGCCTTTGAGTTTCCTCAGGCTGCTGGAGG AAAACTGAGACTCAGACAGGAAAGGGAAGGCCCCACAGACAAGGTAGCCCTGGCCAGAGGCTTGTTTTGT CTTTTGGTTTTTATGAGGTGGGATATCCCTATGCTGCCTAGGCTGACCTTGAACTCCTGGGCTCAAGCAG TCTACCCACCTCAGCCTCCTGTGTAGCTGGGATTATAGATTGGAGCCACCATGCCCAGCTCAGAGGGTTG TTCTCCTAGACTGACCCTGATCAGTCTAAGATGGGTGGGGACGTCCTGCCACCTGGGGCAGTCACCTGCC CAGATCCCAGAAGGACCTCCTGAGCGATGACTCAAGTGTCTCAGTCCACCTGAGCTGCCATCCAGGGATG CCATCTGTGGGCACGCTGTGGGCAGGTGGGAGCTTGATTCTCAGCACTTGGGGGATCTGTTGTGTACGTG GAGAGGGATGAGGTGCTGGGAGGGATAGAGGGGGGCTGCCTGGCCCCCAGCTGTGGGTACAGAGAGGTCA AGCCCAGGAGGACTGCCCCGTGCAGACTGGAGGGGACGCTGGTAGAGATGGAGGAGGAGGCAATTGGGAT GGCGCTAGGCATACAAGTAGGGGTTGTGGGTGACCAGTTGCACTTGGCCTCTGGATTGTGGGAATTAAGG AAGTGACTCATCCTCTTGAAGATGCTGAAACAGGAGAGAAAGGGGATGTATCCATGGGGGCAGGGCATGA CTTTGTCCCATTTCTAAAGGCCTCTTCCTTGCTGTGTCATACCAGGCCGCCCCAGCCTCTGAGCCCCTGG GACTGCTGCTTCTTAACCCCAGTAAGCCACTGCCACACGTCTGACCCTCTCCACCCCATAGTGACCGGCT GCTTTTCCCTAAGCCAAGGGCCTCTTGCGGTCCCTTCTTACTCACACACAAAATGTACCCAGTATTCTAG GTAGTGCCCTATTTTACAATTGTAAAACTGAGGCACGAGCAAAGTGAAGACACTGGCTCATATTCCTGCA GCCTGGAGGCCGGGTGCTCAGGGCTGACACGTCCACCCCAGTGCACCCACTCTGCTTTGACTGAGCAGAC TGGTGAGCAGACTGGTGGGATCTGTGCCCAGAGATGGGACTGGGAGGGCCCACTTCAGGGTTCTCCTCTC CCCTCTAAGGCCGAAGAAGGGTCCTTCCCTCTCCCCAAGACTTGGTGTCCTTTCCCTCCACTCCTTCCTG CCACCTGCTGCTGCTGCTGCTGCTAATCTTCAGGGCACTGCTGCTGCCTTTAGTCGCTGAGGAAAAATAA AGACAAATGCTGCGCCCTTCCCCAGAGTGGACTCTGATCTGTTCATGAGAGGGCGGGACTGGGGCCAAGA TGTAGCCTTTGACAAGACCAACTCATTTCTTATTACTGATCATCTCTGGGGCCCATGCCCTCACCAAATT CCACCCGCAGCCAAAGAGGACATACACCAGCTCCCTCCACTCTTTTCTTCCTTCCTCTCCCTGCTACCTG CAACTCAACCAGCACAATCTTCATAGGCAAGAAAGCAAAGCAGCTCAAACATGATTCAACACTGATCAGT GTTTACCACTGGATAAATCTGAGTTCACACTTTCCTTCTCTGACCTAAATGTGAAGTCAGGAAACACATG TGCCCTACTTCCATCCTGAGCTCAGTCCCCAATCTCCCACCAGCCTCAGGCCCCTCCACTTCTCAGATCA GGTCCCAGACCTGCCCATGAAAATGGGGAGCAGGCTGTAACAGATTTGTCCACATGTTCCTACCACCTGT CCCAACCCAGGGTACCCACCCAGAGACATCTGGTATCATTTAACAAACACATTGAAGGACAACTGGTCTT CAGAGCTGAAGAGAGCTCCTAGGGGGAGAAGCTGGGACAACAGTGAAATAAGTAGCAGCAGCAACGACAG AAGTGAATGGTGACAAAGACTGCTGTGATGAGCAGGTAGCCTATCAGGGTGAGCTCCACAGCCGAGCGAG TCTCAGGATCTGAGAACGAGGCTGGGTAGTGCCCATGAGATGTCACACCCAGCCGGAAGCCAGCAACTAG CACACCCTGCCTCCAGCAATAGTAGATGCCCCGGTCATCCAGCTGGGTGAAGCGGATGTGGAGCTGGTTG CCGTGGTCAATGAACACCCTCATGGACCTGTTGACACCCTTCAGGTACTGTGTGCGGTAGAGGTGCTGGC GGTCTTTGTCCCAGGCCACTGCATGCTCTGGCCGGGCCCCAGGACAGGAGATGATGAGTCCATGGCCCAG TCTCTGCTGGTGGAACTGAATGGGCACCTGGGGCACCCAGGGCCGGCTGCCCACTTTGGACACATAGTTA ATGATGGCCAGCACGCCCTCCCGGATGGTCTTTGTCTTCTCACAGGGTACTAAGCAGCTCCGAACCAGCA CCTCAGGCGTGTGGTCCCTGGCCTTGGTCCGCAGCTTCCTTGGCACAGCCCTTGAGCCACAAGACACCAC ATCGGGCACGGCCTTGAGGTAGCGTGGGGAGAGGTCTGGGCTCTGCAGGTAGCAGAGGCCGATGCGCCAC TGCTCCCCACGCACTCCGCAGCGGTCACAGGGGGTCCATTCCCAGAAGGTGGTGAAGACATGGAGGTGCC CATAGTATTCATCTGCAAAGGGCTCCTGGCCCTTGTCCTGGAAAGTGGCCACCATTCCCTCACTGTTCTG GATGTCCACATCGTAGGCGTAAAAGTAGTCCCCCTTGCGGGTGCCGCAGAAGTACAGGCCTGAGTCCTCA GACTGAGCCCTGAAAACCAACAAGCTGAACATGCGGATGCTGAAGCGGGTCAGCATGTCGCTGCCCACAC GTACCTGGGCTGCCTCCGTCAGCACCCGCCCATCAAAGTCCGTCAGCACTTTGGTGTGGCTGCTACCTAG GTGCTTTTGGTAGAACCAGACTACAGCTGGCACCTCTTCGGGTTTGCAGTGACAGGGAAGCTCAAAGCTC ATGTCGGCCAGGTAGGCTGCATTTTCAAACATCAGGAAAGCAGGGCAGGGGGTCCTCTGAAAAATGTTTT CCTTCTCCACAATTTCAAAGGCCTGGAGCCCCCATGCCCACAGGAGCACAGTGGTGAGGGCCAGGTGCAT ACCTGAAGGAGGCAGGGGTCAGAGGGGCAGGGCAAAACCAGGGCATTAAAGGCTCATAGGGCTCCTAGAA AGCTCTGCTAAGCGGAAGCCTCTAGATGAGGAAAGGATTATGCAGCCAGGAAAAGCAGCAACAATCTGCA GAGGAAGCCGCCAAGTGCAAGGCAATTTATTCCCAGTGGATGTACAAGATGCCCTTCTAACATTCCAGAC CTGATCTCAGGGTGGGGGGGGAAAGCCATTCTAGAACCTGGCCTTTACTCCCCTTTCTAGAACACTGGCG CTCACCCAAGAATGGGTCAAAGGAAACCGGAATGAGAAGGGCGGGCCGAGGTGCTCGGGCAGGGAGATCT CTGCCTCAGTGCTCCAGGCCCTGCCCTGCCAGCCTGGTGGAAAAGTCTTTCATCAACCTGGGGGATGAAG GAAACCCACCCTCCTGCATATCTGGCCATCCGGGAGGCTGGCTGGACCTGAGCTGATGGCTTGGGACTTT CCCAGGCCCAACCTGCACAAGAACTGAGTCTCTAGGGGAAAATTCAACACCTCAAATGATGTAGTATTTG ATCATTTGTTGATTACATGTCCATTCATTGGTTTGGGGCTATAAACATTCTTGTTAAGAGCTGTGGAGAT CAGTGTTTGTTTACCATAAAGATTTTGCTTTTTCCCTTTTA

Accordingly, preferably GFAP comprises or consists of a nucleotide sequence substantially as set out in SEQ ID No: 8, or a fragment or variant thereof.

The skilled person would understand that there are a number of natural variants of the referenced biomarkers and that the method may extend to the detection of any one of these naturally occurring variants of D-dimer, OPN, OPG and GFAP.

The sample may be any fluid and/or tissue taken or derived from the individual identified as or suspected of having or having had a stroke. In some embodiments the sample is one or more of cells, tissues, cerebral spinal fluid (CSF), whole blood, serum, plasma, cytosolic fluid, urine, faeces, stomach fluids, tears, digestive fluids, saliva, nasal or other airway fluid, vaginal fluids or semen. In some embodiments more than one sample may be taken from the individual. In some embodiments, two or more samples are taken from the individual. In some such embodiments the samples may be different, for example the samples may be whole blood and CSF; saliva and whole blood; whole blood, CSF and tears. In some embodiments, the sample from the individual is one or more of blood, plasma, cerebrospinal fluid or saliva. Preferably, the sample is a whole blood or plasma sample. More preferably, the sample is a plasma sample. Most preferably, the sample is a whole blood sample.

In some embodiments, the sample or samples taken from the individual are processed prior to analysis to detect and/or quantify any biomarker in the sample. The need for processing and/or the type of processing of the sample required depends upon the biomarker to be detected and/or the assay to be used to detect the biomarker. In some embodiments, the sample may need to be diluted with, for example, saline solution to obtain a concentration appropriate for the biomarker detection assay.

A whole blood sample may be processed to provide blood plasma and/or blood serum using standard procedures in the art. For example, whole blood sample may be centrifuged at 2000 g for 15 minutes at 4° C. to provide blood plasma, which can then be used directly or diluted with saline solution as required for the biomarker detection assay.

The sample is then analysed, to detect the presence of the target biomarker(s) and/or to determine the amount of the target biomarker(s) in the sample. Where more than one sample has been taken from the individual, analysis of the samples may be carried out simultaneously or sequentially. Samples from more than one individual may be analysed simultaneously and/or in the same assay.

Analysis may be carried out by any suitable means. For example, analysis may be carried out by one or more of ELISA, lateral flow immunochromatographic assay (lateral flow), radioimmunoassay, radioassay, enzyme activity assay, cellular assay, western blot, Southern blot, northern blot, immunoprecipitation, immunofluorescence, liquid chromatography, high performance liquid chromatography, positron emission tomography, mass spectrometry, RT-PCR, PCR, mass spectroscopy, gel electrophoresis, mass-sensing BioCD protein array, electrochemical immunoassay, surface enhanced Raman spectroscopy, fluorescence based detection, flow cytometry, nanoparticle based detection, quantum dot technology and protein microarray.

In some embodiments the analysis technique involves use of one or more agents that recognise and bind to a biomarker in the sample. The agent may have the ability to bind to more than one biomarker.

In some embodiments, the agent is a monoclonal or polyclonal antibody. The agent may be an intact antibody, a fragment (e.g., Fab or F(ab′)2), or an engineered variant thereof (e.g., sFv). Such antibodies can be of any immunoglobulin class, and any subclass thereof, including IgG, IgM, IgE, IgA, IgD. Suitable antibodies are commercially available, for example from Abcam (Cambridge, UK).

The agent may be labelled to allow detection. Suitable detectable labels are known in the art. As an example, conjugation of an agent with horseradish peroxidase (HRP) allows detection of the agent by addition of an appropriate substrate that can be transformed by enzymatic action of HRP to produce a colour change. Other examples of detectable labels include alkaline phosphatase, peroxidase, colloidal gold, fluorescent compounds, biotin, radioisotopes, luminescent compounds, magnetic particles, and other enzymes. Detectable labels and labelling kits are commercially available from, for example, Expedeon Ltd, Cambridge, UK.

A primary/secondary antibody system may also be used to detect and/or determine the amount of biomarker in a sample. In such a system, a sample is contacted with a primary antibody that specifically recognizes and binds to one or more biomarkers. Subsequently, a secondary antibody with an appropriate label that recognizes the species or isotype of the primary antibody is contacted with the sample. Detection of the one or more biomarkers in the sample is achieved by measuring the signal generated by a labelling molecule conjugated to the secondary antibody.

An antibody produced in a different species may be used for detection of a biomarker bound by a first antibody. For example, a first antibody generated in rabbit; and a secondary anti-species antibody able to recognise and bind the primary antibody generated in a rabbit.

The agent may have the ability to bind to more than one biomarker, one or more of which are bound to a substrate. In such embodiments, the agents may be bound with spatial overlap. In some such embodiments the agents may be differentially labelled to allow detection, for example the use of colour intensity-based labels allows detection and quantification of each spatially overlapping bound biomarker.

In some embodiments, the sample may be immobilised on a suitable substrate, such as a physical substrate such as a nitrocellulose or PVDF membrane, a rigid substrate made of polystyrene, or other plastic polymer such as a microtiter plate. The substrate may then be contacted with an antibody that specifically recognises and binds to a first biomarker. Washing of the substrate helps to ensure specific binding of the antibody to the target biomarker. The antibody may be labelled, for example through conjugation with a detectable label such as an enzyme, fluorophore, or radioisotope. Detection of the label and quantification of the amount of binding may be achieved by suitable means. Alternatively, a secondary antibody conjugated with a detectable label that binds to the biomarker-first antibody complex may be added, followed by washing to remove additional antibody and ensure that the presence of the detectable label on the substrate is indicative of the sample containing the biomarker being measured.

Alternatively, a biomarker-specific antibody may be immobilised on the substrate, which is then contacted with a biomarker, itself being conjugated with a detectable label. Contact of the labelled biomarker with the antibody causes the antibody to bind the labelled biomarker. The sample is then contacted with the substrate in conditions that allow binding of the biomarker to the antibody. Since the biomarker in the sample is not labelled, displacement of the labelled biomarker from the antibody results in a reduction in the amount of detectable label on the substrate after washing and indicates that the sample contains the biomarker.

Alternative agents include peptides, aptamers, enzymes, or small molecules that specifically bind to a target biomarker. For example, an aptamer that specifically binds H-FABP might be used. Aptamers are nucleic acid-based molecules that bind specific ligands. Methods for making aptamers with a particular binding specificity are known as detailed in U.S. Pat. Nos. 5,475,096; 5,670,637; 5,696,249; 5,270,163; 5,707,796; 5,595,877; 5,660,985; 5,567,588; 5,683,867; 5,637,459; and 6,011,020.

Quantification of the amount of biomarker in a sample may be carried out using any suitable assay. For example, an antibody-based assay, or immunosorbent assay such as ELISA, lateral flow, radioimmunoassays or immunoprecipitation. In some embodiments, the analysis is carried out using ELISA. In some embodiments, the analysis is carried out using a lateral flow assay.

Alternative and/or complementary methods may be used to detect non-immunogenic molecules or compounds, such as metabolites, catabolites, peptides, hormones, signalling molecules, small molecules, drugs or any other compound or molecule that, in its naturally occurring form, may not be recognised or bound by an antibody. Such methods include colorimetric methods, enzymatic methods, gas chromatography (GC) and gas chromatography-mass spectrometry (GC-MS), high-performance liquid chromatography (HPLC) and high-performance liquid chromatography-mass spectrometry (HPLC-MS), nuclear magnetic resonance (NMR) spectroscopy, Raman spectroscopy. For example, a suitable colorimetric method may be based upon a chemical reaction similar to that originally described by König [Journal fur Praktische Chemie, 1904, 70, 19-56 & Journal fur Praktische Chemie, 1904, 69, 105-137].

Moreover, techniques for measuring a biomarker in vivo include introducing a binding agent that specifically recognises and binds the biomarker into a patient.

In some embodiments the amount of a biomarker in the sample taken from the individual identified as or suspected of having or having had a stroke is compared to a negative reference, and/or one or more positive references.

A negative reference is a laboratory solution such as a saline solution or buffer, where the target biomarker is absent, or the amount of the target biomarker is known to be undetectable. A positive reference is a laboratory solution such as a saline solution or buffer, comprising the target biomarker in a known amount. The biomarker used to create the positive and/or negative references may be the isolated target biomarker, or a version thereof, such as a recombinant or synthetic version of the biomarker.

In some embodiments, the amount of biomarker in the sample taken from the individual identified as or suspected of having or having had a stroke may be compared to a negative reference and/or a range of positive references comprising different, known amounts of the target biomarker.

In some embodiments a difference between the amount of biomarker in the sample taken from the individual identified or suspected as having or having had a stroke and the negative reference is indicative that the individual has suffered a stroke as a result of LVO. In some embodiments, a statistically significant difference between the amount of biomarker in the sample taken from the individual identified or suspected as having or having had a stroke and the negative reference is indicative that the individual has suffered a stroke as a result of LVO. In some embodiments a correlation between the amount of biomarker in the sample taken from the individual identified or suspected as having or having had a stroke and a positive reference determines or provides an indication of the amount of that biomarker in the sample from the individual.

Alternatively, or in addition, the amount of a biomarker in the sample taken from the individual identified or suspected as having or having had a stroke may be compared to the amount of the same biomarker in a control.

A control is a sample or data generated from a sample taken from one or more healthy individuals. The term ‘healthy individual’ as used herein means an individual who has no signs or symptoms of stroke and who has no history of stroke. Alternatively or in addition, the control may be a sample or data generated from a sample taken from one or more individuals who are having or who have had a TIA, stroke mimic, haemorrhagic stroke or stroke resulting from small vessel occlusion. The term “individuals who are having or who have had a TIA, stroke mimic, haemorrhagic stroke or stroke resulting from small vessel occlusion” as used herein means individuals who are or have been determined, by clinical assessment, to be suffering a TIA, stroke mimic, haemorrhagic stroke or stroke resulting from small vessel occlusion. Such patients may be included in the control group (i.e. contribute a sample for inclusion in the control) until neurological symptoms associated with the TIA, stroke mimic haemorrhagic stroke or stroke resulting from small vessel occlusion have ceased. Preferably, a control is a sample or data taken from one or more patients that have not suffered from LVO stroke. Preferably, a control is a sample or data taken from patients that have suffered from non-LVO stroke. Preferably, the control is a sample or data taken from: ischemic non-LVO, haemorrhagic, and/or non-stroke patients.

In some embodiments a difference between the amount of biomarker in the sample taken from the individual identified or suspected as having or having had a stroke and the control is indicative that the individual has suffered a stroke as a result of LVO. In some embodiments, a statistically significant difference between the amount of biomarker in the sample taken from the individual identified or suspected as having or having had a stroke and the control is indicative that the individual has suffered a stroke as a result of LVO.

Alternatively or in addition, the amount of a biomarker in the sample from the individual may be compared to the amount of the same biomarker in a positive standard. A positive standard is a sample or data generated from a sample taken from an individual who presents with one or more signs or symptoms associated with stroke who has, in addition, been diagnosed as having or having had a stroke as a result of LVO.

In some embodiments, a comparable amount of biomarker in the sample taken from the individual identified as or suspected of having or having had a stroke and the positive standard is indicative that the individual has suffered a stroke as a result of LVO. In some embodiments, a statistically significant difference between the amount of biomarker in the sample taken from the individual identified as or suspected of having or having had a stroke and the positive standard is indicative that the individual has suffered a stroke as a result of LVO.

In some embodiments, a ratio between two or more biomarkers may be calculated, wherein the ratio is the amount of one biomarker (the ‘target biomarker’) relative to the amount of the other biomarker (the ‘reference biomarker’). In some embodiments, the reference biomarker is in a control, a positive reference or a positive standard; for example, the amount of biomarker in a sample taken from an individual suspected of having a LVO stroke may be compared to a sample or data generated from a sample taken from one or more healthy individuals. In some embodiments the target and reference biomarkers are from the same sample, for example the amount of succinate may be compared to the amount of GFAP in a sample taken from an individual suspected of having a LVO stroke. Alternatively or in addition, the level of a biomarker(s) may be analysed in samples taken from the same individual at different times, for example, the amount of GFAP may be compared in two samples taken from an individual before and after the individual has suffered a stroke. In some embodiments a positive ratio is indicative that the individual has suffered a stroke as a result of LVO, whilst a negative ratio is indicative that the individual has not suffered a stroke as a result of LVO, wherein the phrase “a positive ratio” denotes an increased amount of a test biomarker relative to a reference biomarker; and “a negative ratio” refers to a decreased amount of a test biomarker relative to the amount of a reference biomarker. A neutral ratio describes no difference or effectively no difference in the amounts of the test and reference biomarker.

Preferably, an increase in the amount of one or more of the biomarkers selected from: D-dimer, OPN and OPG when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, an increase in the amount of two or more of the biomarkers selected from: D-dimer, OPN and OPG when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an increase in the amount of the biomarkers selected from: D-dimer, OPN and OPG when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an increase in the amount of D-dimer, OPN, and/or OPG when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an increase in the amount of D-dimer, OPN and OPG when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a decrease in the amount of GFAP when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a decrease in the amount of GFAP when compared to a healthy or haemorrhagic stroke control or negative reference, is indicative that the individual has suffered a non-haemorrhagic stroke, preferably as a result of LVO. Preferably, an increase in the amount of GFAP when compared to a healthy or non-haemorrhagic control or negative reference, is indicative that the individual has suffered a haemorrhagic stroke.

Preferably, an increase in the amount of D-dimer, OPN and/or OPG and a decrease in the amount of GFAP when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an increase in the amount of D-dimer, OPN and OPG and a decrease in the amount of GFAP when compared to a healthy or non-LVO control or negative reference, is indicative that the individual has suffered a stroke as a result of LVO.

The amount of biomarker may relate to the concentration of the biomarker polypeptide sequence. Preferably, the concentration of the biomarker polypeptide sequence relates to the concentration of the biomarker in whole blood. Preferably, the concentration of the biomarker polypeptide sequence relates to the concentration of the biomarker in plasma.

Preferably, a concentration of at least 0.5 μg/ml of D-dimer protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1 μg/ml of D-dimer protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.2 μg/ml of D-dimer protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.3 μg/ml of D-dimer protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.4 μg/ml of D-dimer protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.5 μg/ml of D-dimer protein is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a concentration of at least 100 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 105 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 110 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 120 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 125 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 150 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 200 pg/ml of OPG protein is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a concentration of at least 1 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.2 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.4 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.6 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 1.8 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 2 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 2.5 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of at least 5 ng/ml of OPN protein is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a concentration of at least 100 pg/ml of GFAP protein is indicative that the individual has suffered haemorrhagic stroke. Preferably, a concentration of at least 150 pg/ml of GFAP protein is indicative that the individual has suffered haemorrhagic stroke. Preferably, a concentration of at least 200 pg/ml of GFAP protein is indicative that the individual has suffered haemorrhagic stroke. Preferably, a concentration of at least 250 pg/ml of GFAP protein is indicative that the individual has suffered haemorrhagic stroke. Preferably, a concentration of at least 260 pg/ml of GFAP protein is indicative that the individual has suffered haemorrhagic stroke. Preferably, a concentration of at least 265 pg/ml of GFAP protein is indicative that the individual has suffered haemorrhagic stroke.

Preferably, a concentration of less than 100 pg/ml of GFAP protein is indicative that the individual has suffered non-haemorrhagic stroke. Preferably, a concentration of less than 150 pg/ml of GFAP protein is indicative that the individual has suffered non-haemorrhagic stroke. Preferably, a concentration of less than 200 pg/ml of GFAP protein is indicative that the individual has suffered non-haemorrhagic stroke. Preferably, a concentration of less than 250 pg/ml of GFAP protein is indicative that the individual has suffered non-haemorrhagic stroke. Preferably, a concentration of less than 260 pg/ml of GFAP protein is indicative that the individual has suffered non-haemorrhagic stroke. Preferably, a concentration of less than 265 pg/ml of GFAP protein is indicative that the individual has suffered non-haemorrhagic stroke.

Preferably, a concentration of less than 100 pg/ml of GFAP protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of less than 150 pg/ml of GFAP protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of less than 200 pg/ml of GFAP protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of less than 250 pg/ml of GFAP protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of less than 260 pg/ml of GFAP protein is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a concentration of less than 265 pg/ml of GFAP protein is indicative that the individual has suffered a stroke as a result of LVO.

In some embodiments, one or more of the measured biomarker amount(s) in the sample are transformed into an LVO stroke score. In some embodiments, the LVO stroke score involves correlating the amount of a biomarker in the sample from the individual with one or more of a negative reference, a positive reference, a control or a positive standard. For example, an LVO stroke score from 0 to 100 may be established, where 0 corresponds to the value of the biomarker in a control, and 100 corresponds to the value of the biomarker in a positive standard. A weight factor may be assigned to one or more of the biomarkers. For example, the biomarkers may be weighted such that biomarkers with a higher diagnostic relevance contribute more to the LVO stroke score. For example, a biomarker may be of higher diagnostic relevance if the amount of that biomarker differs significantly between an individual diagnosed as having or having had an LVO and a control. In contrast, a biomarker may be of less diagnostic relevance if the difference in the amount of that biomarker in an individual diagnosed as having or having had an LVO and a control is small. Such weight factors modulate the contribution of the biomarker to the diagnosis of LVO stroke. The weight factor may be introduced in a computational step, for example using an algorithm, or when binding of an agent to the biomarker is detected and measured in a detection tool such as an optical reader.

In some embodiments, the LVO stroke score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke may be compared to an LVO stroke score created using biomarker amounts from a control, or from a positive standard.

In some embodiments, an LVO score created using measured biomarker amounts in a sample taken from the individual identified as or suspected of having or having had a stroke which is comparable to an LVO score created using biomarker amounts from a positive standard is indicative that the individual has suffered a stroke as a result of LVO. In some embodiments, an LVO score created using measured biomarker amounts in a sample taken from the individual identified as or suspected of having or having had a stroke which is statistically comparable to an LVO score created using biomarker amounts from a positive standard is indicative that the individual has suffered a stroke as a result of LVO.

In some embodiments, a difference between an LVO score created using measured biomarker amounts in a sample taken from the individual identified as or suspected of having or having had a stroke and a control is indicative that the individual has suffered an LVO stroke. In some embodiments, a statistically significant difference between an LVO score created using measured biomarker amounts in a sample taken from the individual identified as or suspected of having or having had a stroke and a control is indicative that the individual has suffered an LVO stroke.

In some embodiments, a defined value or range (“cut-off value”) is provided for one or more of the biomarkers, and/or for the LVO stroke score. In some such embodiments, an LVO stroke score or an amount of a biomarker above the defined value is indicative that the individual has suffered a stroke resulting from LVO. In other such embodiments, an LVO stroke score, or an amount of a biomarker below the defined value is indicative that the individual has not suffered a stroke resulting from LVO.

In some embodiments, the method may be carried out within about 72, within about 48 or within about 24 hours of the onset of stroke symptoms in the individual. In some embodiments, the method is carried out within about 24 or within 24 hours of the onset of stroke symptoms in the individual. In some embodiments, the method is carried out within about 17 or within 17 hours of the onset of stroke symptoms in the individual. In some embodiments, the method is carried out within about 10 or within hours of the onset of stroke symptoms in the individual. In some embodiments, the method is carried out within about 6 or within 6 hours of the onset of stroke symptoms in the individual.

Preferably, the method is performed on a sample that has been obtained from an individual within about 24 or within 24 hours of the onset of stroke symptoms in the individual. More preferably, the method is performed on a sample that has been obtained from an individual within about 17 or within 17 hours of the onset of stroke symptoms in the individual. Even more preferably, the method is performed on a sample that has been obtained from an individual within about 10 or within 10 hours of the onset of stroke symptoms in the individual. Most preferably, the method is performed on a sample that has been obtained from an individual within about 6 or within 6 hours of the onset of stroke symptoms in the individual.

As shown in FIGS. 9 and 14 , combining biomarker expression with a stroke severity score significantly improves the sensitivity and specificity of the method.

Thus, in some embodiments, the method further comprises consideration of data and/or information from one or more clinical assessments the individual has undergone. The clinical assessments may include one or more of CT or CTA, MRA, MRI, diffusion weighted imaging, cerebral angiography, electrocardiogram, atrial fibrillation assessment, FAST (face, arm, speech test), ABCD, ABCD2 and California prediction rules Rosier (Recognition of Stroke in the Emergency Room) stroke scale, stroke scale, and TOAST (trial of ORG. 10172 in Acute Stroke Treatment) classification, OCSP (the Oxford Community Stroke Project classification), National Institutes of Health Stroke Scale (NIHSS), Emergency Medical Stroke Assessment (EMSA), Prehospital Acute Stroke Severity (PASS) scale, Vision, Aphasia, Neglect (VAN) assessment, Rapid Arterial Occlusion Evaluation (RACE), Field Assessment Stroke Triage for Emergency Destination (FAST-ED) scale, Cincinnati pre-hospital Stroke Severity Scale (CPSSS), doppler ultrasound, carotid duplex ultrasound, angiography or arteriography. In some embodiments, the method further comprises consideration of data and/or information from angiographical assessment by CTA and/or MRA. Preferably, the method further comprises determining the stroke severity score of the individual. Preferably the stroke severity score is selected from NIHSS, FAST, FAST-ED, RACE, C-STAT and EMSA. Such scores are well known in the art and the methods by which the scores are calculated would be known to those skilled in the art.

Preferably, a NIHSS score of one or more is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a FAST score of 1 or more is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a FAST-ED score of 1, 2, 3, 4 or 5 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a FAST-ED score of 2 or more is indicative that the individual has suffered a stroke as a result of LVO. More preferably, a FAST-ED score of 3 or more is indicative that the individual has suffered a stroke as a result of LVO. More preferably, a FAST-ED score of 4 or more is indicative that the individual has suffered a stroke as a result of LVO. More preferably, a FAST-ED score of or more is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a RACE score of 1, 2, 3, 4, 5, 6 or 7 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 1 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 2 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 3 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 3 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 4 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 5 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 6 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a RACE score of 7 or more is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, a C-STAT score of 1 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, a C-STAT score of 2 or more is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, an EMSA score of 3, 4 or 5 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an EMSA score of 3 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an EMSA score of 4 or more is indicative that the individual has suffered a stroke as a result of LVO. Preferably, an EMSA score of 5 or more is indicative that the individual has suffered a stroke as a result of LVO.

Preferably, the stroke severity score is NIHSS. Preferably, the stroke severity score is FAST. Preferably, the stroke severity score is FAST-ED. Preferably, the stroke severity score is RACE. Preferably, the stroke severity score is C-STAT. Preferably, the stroke severity score is EMSA.

Most preferably, the stroke severity score is FAST, FAST-ED or EMSA.

In a most preferred embodiment, the biomarkers are D-dimer and GFAP and the stroke severity score is FAST, FAST-ED or EMSA.

Preferably, the method comprises combining the amount of one or more biomarkers measured in the sample taken from an individual identified as or suspected of having or having had a stroke and a stroke severity score obtained from the individual.

Preferably, the method further comprises combining the amount of one or more biomarkers measured in the sample taken from an individual identified as or suspected of having or having had a stroke and a stroke severity score obtained from the individual, to produce an LVO stoke score.

Preferably, the method comprises comparing the LVO stroke score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke and the stroke severity score taken from an individual identified as or suspected of having or having had a stroke, to an LVO stroke score created using biomarker amounts and stroke severity scores from a control, or from a positive standard.

Preferably, the individual is diagnosed as having or having had a stroke as a result of LVO when the LVO stroke severity score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke and the LVO stroke score taken from an individual identified as or suspected of having or having had a stroke, is comparable to a positive standard; or when the LVO stroke severity score created using the measured biomarker amounts in a sample taken from an individual identified as or suspected of having or having had a stroke and the LVO stroke severity score taken from an individual identified as or suspected of having or having had a stroke, differs from the LVO stroke score created using biomarker amounts and stroke severity scores from a control.

The LVO stroke score may be calculated by processing the amount of one or more biomarkers and the stroke severity score obtained from the individual using linear regression, random forest, neural networks, support vector machines, Bayesian regression, Bayesian logistic regression or partial least square regression.

Preferably, the LVO stroke score is calculated by processing the amount of one or more biomarkers and the stroke severity score obtained from the individual using a regression model, preferably a multivariate logistic regression model.

Preferably, the LVO stroke score is determined by solving the following equation:

Y=a*X ₁ ,b*X ₂ , . . . ,n*X _(n)

Where a, b, . . . n indicate the multiplication coefficient of each biomarker or stroke severity score, while X₁, X₂ . . . X_(n) indicate the values of biomarkers or stroke severity score measured or obtained from a patient.

Preferably, the multiplication coefficients for each measured biomarker or stroke severity score are as recited in FIG. 13 .

The LVO stroke score may be obtained by transforming the value of Y obtained by solving the above equation, for each patient, with a logistic transformation which will be known by anyone skilled in the art.

Thus, preferably, the LVO stroke score is calculated by solving a linear equation based on the coefficients recited in FIG. 17 and the measurements of each corresponding biomarker and stroke severity score collected for any given suspected stroke patient.

In one embodiment, the LVO stroke score may have values between 0 and 1 for any subject. The threshold value of LVO stroke score that may be used to diagnose LVO patients may vary according to which combination of biomarkers and stroke severity scale is chosen. Preferably, the threshold value of LVO stroke score that is used to diagnose LVO patients is chosen among the values recited in FIG. 14 .

Preferably, an LVO stroke score greater than 0.20 is indicative of an individual suffering from LVO stroke Preferably, an LVO stroke score greater than 0.24 is indicative of an individual suffering from LVO stroke. Preferably, an LVO stroke score greater than 0.30 is indicative of an individual suffering from LVO stroke. Preferably, an LVO stroke score greater than 0.31, 0.32, 0.33, 0.34, 0.35, 0.36, 0.37, 0.38, 0.39 or 0.40 is indicative of an individual suffering from LVO stroke.

More preferably, an LVO stroke score of greater than 0.33 is indicative of an individual suffering from LVO stroke. More preferably, an LVO stroke score of greater than 0.34 is indicative of an individual suffering from LVO stroke. More preferably, an LVO stroke score of greater than 0.35 is indicative of an individual suffering from LVO stroke. Most preferably, an LVO stroke score of greater than 0.39 is indicative of an individual suffering from LVO stroke.

CTA is a computer-reconstructed tomography technique used to visualise arterial and venous vessel at the level of the head, neck, and/or brain. By applying a contrast agent, CTA allows the visualisation of blockages, aneurysms, dissections and stenosis of blood vessels. Contrast agents are any radiodense compounds that can block the X-ray portion of the electromagnetic spectrum, therefore resulting into opacity areas of the computed images.

MRA refers to any magnetic resonance imaging-based diagnostic technique used to generate images of blood vessels to visualise blockages, aneurysms, dissections and stenosis of blood vessels. Contrast agents, such as the ones based on gadolinium are applied to generate the images and a variety of different techniques are available (Johnson et al “Magnetic resonance angiography: A review.” Academic radiology 5, no. 4 (1998): 289-305.)

Identification of an individual who is suffering or has suffered a stroke as a result of LVO allows selection of appropriate further clinical investigations and or a treatment pathway for that individual.

Accordingly in a second aspect there is provided a method of identifying, from a group of individuals identified as or suspected of having or having had a stroke, individuals who have suffered a stroke as a result of LVO, comprising determining the amount of at least two biomarkers in a sample taken from each individual wherein the biomarkers are selected from: succinate, succinic-glutathione, N-acetyl-aspartate, propionyl-carnitine, glutamate, heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, osteoprotegerin (OPG), soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, bilirubin, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metallo-proteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF), or P-selectin.

However, preferably, the method of the second aspect comprises determining the amount of at least one of the biomarkers selected from: D-dimer, OPN and OPG. More preferably, the method comprises determining the amount of at least two of the biomarkers selected from: D-dimer, OPN and OPG. Most preferably, the method comprises determining the amount of D-dimer, OPN and OPG. Preferably, the method of the second aspect comprises determining the amount of at least one of the biomarkers selected from: D-dimer, OPN, GFAP and OPG. More preferably, the method comprises determining the amount of at least two of the biomarkers selected from: D-dimer, OPN, GFAP and OPG. Most preferably, the method comprises determining the amount of D-dimer, OPN, GFAP and OPG.

Therefore, preferably the biomarkers, determining the amount and concentration of biomarkers may be as defined in the first aspect.

The method may be performed in vivo, in vitro or ex vivo. Preferably, the method is performed in vitro or ex vivo. Most preferably, the method is performed in vitro.

The biomarkers may be detected using any method disclosed herein. In addition, the amount of biomarker may be determined using any method disclosed herein.

In some embodiments the method according to the second aspect comprises determining the amount of at least three, at least four, at least five, at least six, at least seven, at least eight, at least nine, at least 10, at least eleven, or 12 or more biomarkers. The method according to the second aspect comprises determining the presence and/or amount of one or more biomarkers in accordance with any embodiment of the first aspect.

In some embodiments according to the second aspect the method comprises comparing the amount of each biomarker in the sample taken from each individual identified as or suspected of having or having had a stroke to the amount of the same biomarker in one or more of a control, a positive standard, one or more positive references or a negative reference, as disclosed in accordance with the first aspect, above.

In some embodiments according to the second aspect, individuals with a difference in the amount of one or more of the measured biomarker relative to the amount of the same biomarker in a control are identified as having or having had a stroke as a result of LVO. In some embodiments according to the second aspect, individuals with a comparable amount of one or more of the measured biomarker relative to a positive standard are identified as having or having had a stroke as a result of LVO.

In some embodiments the method comprises transforming the amount of one or more biomarkers measured in the sample taken from an individual identified as or suspected of having or having had a stroke into an LVO stroke score, as disclosed in accordance with the first aspect, above.

In some embodiments according to the second aspect, individuals with an LVO score comparable to an LVO score created using biomarker amounts from a positive standard are identified as having or having had a stroke as a result of LVO. In some embodiments, individuals with an LVO score statistically comparable to an LVO score created using biomarker amounts from a positive standard are identified as having or having had a stroke as a result of LVO. In some embodiments, individuals with an LVO score that differs from an LVO score created using biomarker amounts from a control are identified as having or having had a stroke as a result of LVO. In some embodiments, individuals with an LVO score that is statistically different from an LVO score created using biomarker amounts from a control are identified as having or having had a stroke as a result of LVO.

In some embodiments the method according to the second aspect further comprises determining the stroke severity score of the individual as defined in the first aspect. In some embodiments the method according to the second aspect combining the amount of one or more biomarkers measured in the sample taken from an individual identified as or suspected of having or having had a stroke and a stroke severity score obtained from the individual, as defined in the first aspect.

In some embodiments the method according to the second aspect further comprises consideration of data and/or information from one or more clinical assessments which each individual has undergone, as disclosed in accordance with the first aspect, above. In some such embodiments the clinical assessment is one or more of a CT or CTA, MRA or MRI scan, or the individual's NIHSS, FAST, ABCD, ABCD2 Rosier, TOAST, EMSA, PASS, VAN, RACE, FAST-ED or CPSS score.

Appropriate further clinical investigations for an individual who is identified as suffering from or has suffered a stroke as a result of LVO include computerised tomography angiography and/or magnetic resonance angiography. Appropriate treatment pathways for an individual who is identified as suffering from or has suffered a stroke as a result of LVO may include treatment with antithrombotic agents and/or mechanical thrombectomy.

In accordance with a third aspect, there is provided the use of two or more biomarkers to diagnose stroke resulting from large vessel occlusion, wherein the biomarkers are selected from succinate, succinic-glutathione, N-acetyl-aspartate, propionyl-carnitine, glutamate, heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, osteoprotegerin (OPG), soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, bilirubin, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metallo-proteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF), or P-selectin.

The biomarkers and concentration biomarkers may be as defined in the first aspect.

In some embodiments, at least three, at least four, at least five, at least six, at least seven, at least eight, at least nine, at least 10, at least eleven, or 12 or more biomarkers are used to identify stroke resulting from large vessel occlusion.

In some embodiments, the biomarkers are in a sample taken from an individual identified as or suspected of having or having had a stroke. The biomarkers may be detected using any method disclosed herein. In addition, the amount of biomarker may be determined using any method disclosed herein.

As described in the Examples and above, the inventors have identified biomarkers that can be used to diagnose stroke as a result of a LVO with a high degree of sensitivity and specificity.

Accordingly, in a fourth aspect of the invention there is provided D-dimer, OPN, OPG and/or GFAP, for use in diagnosing stroke as a result of a large vessel occlusion (LVO).

In one embodiment, there is provided D-dimer, for use in diagnosing stroke as a result of a large vessel occlusion (LVO). In one embodiment, there is provided OPN, for use in diagnosing stroke as a result of a large vessel occlusion (LVO). In one embodiment, there is provided OPN, for use in diagnosing stroke as a result of a large vessel occlusion (LVO). In one embodiment, there is provided GFAP, for use in diagnosing stroke as a result of a large vessel occlusion (LVO). In one embodiment, there is provided D-dimer and GFAP, for use in diagnosing stroke as a result of a large vessel occlusion (LVO).

In one embodiment, there is provided D-dimer, OPN and OPG, for use in diagnosing stroke as a result of a large vessel occlusion (LVO).

The biomarkers may be detected using any method disclosed herein. In addition, the amount of biomarkers may be determined using any method disclosed herein.

Preferably, the biomarkers, determining the amount, the concentration of biomarkers associated with stroke as a result of a LVO and the sample are as defined in the first aspect.

In a fifth aspect of the invention, there is provided GFAP, for use in diagnosing haemorrhagic stroke.

Preferably, GFAP, determining the amount, the concentration of associated with stroke as a result of a LVO and the sample are as defined in the first aspect.

There is also provided, in a sixth aspect, a kit for carrying out a method according to the first, second and third aspects of the invention. The kit may comprise one or more of: a container for holding a sample from the individual identified or suspected as having or having had a stroke; a means for determining the amount of the target biomarker(s); and instructions, such as printed instructions on how to carry out the reaction between the sample and the means provided so as to determine the amount of the target biomarker(s).

In some embodiments, the means for determining the amount of the target biomarker(s) may comprise one or more agents as disclosed herein. The agent(s) may be antibodies. The agents may be immobilised on a substrate and/or may be labelled with at least one detectable label. In some embodiments each agent is labelled with a different detectable label.

The methods according to the invention enable patients suffering from stroke resulting from LVO to be quickly and easily identified and the appropriate treatment option selected.

Accordingly, in an seventh aspect there is provided a method of treating an individual suffering from stroke as a result of a large vessel occlusion (LVO), the method comprising:

-   -   a) determining the amount of at least one biomarker in a sample         taken from each individual wherein the biomarkers are selected         from: osteoprotegerin (OPG), glial fibrillary acidic protein         (GFAP), D-dimer and osteopontin (OPN), wherein the amount of         biomarker suggest that the individual is suffering from stroke         as a result of a large vessel occlusion (LVO; and     -   b) administering, or having administered, to the individual, a         therapeutic agent that treats stroke as a result of a large         vessel occlusion (LVO).

The biomarkers may be detected using any method disclosed herein. In addition, the amount of biomarker may be determined using any method disclosed herein. Preferably, the biomarkers, determining the amount of biomarkers, concentrations of biomarkers associated with stroke as a result of a LVO and sample are as defined in the first aspect.

Preferably, the treatment comprises mechanical thrombectomy (MT) and/or intravenous or intraarterial thrombolytic treatment.

Without wishing to be bound by any theory, it is suggested that the accuracy of detection of stroke resulting from LVO in methods according to the invention arises as a result of the detection of certain amounts of specific biomarkers or a specific combination of biomarkers in a sample from an individual suspected of having or having had a stroke, levels of which are altered as a result of biological changes that occur as a result of LVO stroke. It is suggested that such markers are associated with brain ischemia and/or death of brain cells, both of which are increased in LVO in comparison to other types of stroke. Ischemia can result in damage to tissue and cells resulting in release and/or upregulation of biomarkers either from the damaged cells or tissues themselves, or from tissues or cells in communication with injured cells.

Accordingly, some embodiments of the invention provide methods, kits and uses for identifying or helping to identify those individuals presenting with stroke who are or have suffered a stroke resulting from LVO. Such embodiments offer the opportunity to allow determination of such individuals with improved accuracy and/or speed, thereby improving the treatment pathway for the individual.

It will be appreciated that the invention extends to any nucleic acid or peptide or variant, derivative or analogue thereof, which comprises substantially the amino acid or nucleic acid sequences of any of the sequences referred to herein, including variants or fragments thereof. The terms “substantially the amino acid/nucleotide/peptide sequence”, “variant” and “fragment”, can be a sequence that has at least 40% sequence identity with the amino acid/nucleotide/peptide sequences of any one of the sequences referred to herein, for example 40% identity with the sequence identified as SEQ ID Nos: 1 to 8 and so on.

Amino acid/polynucleotide/polypeptide sequences with a sequence identity which is greater than 65%, more preferably greater than 70%, even more preferably greater than 75%, and still more preferably greater than 80% sequence identity to any of the sequences referred to are also envisaged. Preferably, the amino acid/polynucleotide/polypeptide sequence has at least 85% identity with any of the sequences referred to, more preferably at least 90% identity, even more preferably at least 92% identity, even more preferably at least 95% identity, even more preferably at least 97% identity, even more preferably at least 98% identity and, most preferably at least 99% identity with any of the sequences referred to herein.

The skilled technician will appreciate how to calculate the percentage identity between two amino acid/polynucleotide/polypeptide sequences. In order to calculate the percentage identity between two amino acid/polynucleotide/polypeptide sequences, an alignment of the two sequences must first be prepared, followed by calculation of the sequence identity value. The percentage identity for two sequences may take different values depending on: —(i) the method used to align the sequences, for example, ClustalW, BLAST, FASTA, Smith-Waterman (implemented in different programs), or structural alignment from 3D comparison; and (ii) the parameters used by the alignment method, for example, local vs global alignment, the pair-score matrix used (e.g. BLOSUM62, PAM250, Gonnet etc.), and gap-penalty, e.g. functional form and constants.

Having made the alignment, there are many different ways of calculating percentage identity between the two sequences. For example, one may divide the number of identities by: (i) the length of shortest sequence; (ii) the length of alignment; (iii) the mean length of sequence; (iv) the number of non-gap positions; or (v) the number of equivalenced positions excluding overhangs. Furthermore, it will be appreciated that percentage identity is also strongly length dependent. Therefore, the shorter a pair of sequences is, the higher the sequence identity one may expect to occur by chance.

Hence, it will be appreciated that the accurate alignment of protein or DNA sequences is a complex process. The popular multiple alignment program ClustalW (Thompson et al., 1994, Nucleic Acids Research, 22, 4673-4680; Thompson et al., 1997, Nucleic Acids Research, 24, 4876-4882) is a preferred way for generating multiple alignments of proteins or DNA in accordance with the invention. Suitable parameters for ClustalW may be as follows: For DNA alignments: Gap Open Penalty=15.0, Gap Extension Penalty=6.66, and Matrix=Identity. For protein alignments: Gap Open Penalty=10.0, Gap Extension Penalty=0.2, and Matrix=Gonnet. For DNA and Protein alignments: ENDGAP=−1, and GAPDIST=4. Those skilled in the art will be aware that it may be necessary to vary these and other parameters for optimal sequence alignment.

Preferably, calculation of percentage identities between two amino acid/polynucleotide/polypeptide sequences may then be calculated from such an alignment as (N/T)*100, where N is the number of positions at which the sequences share an identical residue, and T is the total number of positions compared including gaps and either including or excluding overhangs. Preferably, overhangs are included in the calculation. Hence, a most preferred method for calculating percentage identity between two sequences comprises (i) preparing a sequence alignment using the ClustalW program using a suitable set of parameters, for example, as set out above; and (ii) inserting the values of N and T into the following formula: —Sequence Identity=(N/T)*100.

Alternative methods for identifying similar sequences will be known to those skilled in the art. For example, a substantially similar nucleotide sequence will be encoded by a sequence which hybridizes to DNA sequences or their complements under stringent conditions. By stringent conditions, the inventors mean the nucleotide hybridises to filter-bound DNA or RNA in 3× sodium chloride/sodium citrate (SSC) at approximately 45° C. followed by at least one wash in 0.2×SSC/0.1% SDS at approximately 20-65° C. Alternatively, a substantially similar polypeptide may differ by at least 1, but less than 5, 10, 20, 50 or 100 amino acids from the sequences shown in, for example, SEQ ID Nos: 1 to 8.

Due to the degeneracy of the genetic code, it is clear that any nucleic acid sequence described herein could be varied or changed without substantially affecting the sequence of the protein encoded thereby, to provide a functional variant thereof. Suitable nucleotide variants are those having a sequence altered by the substitution of different codons that encode the same amino acid within the sequence, thus producing a silent (synonymous) change. Other suitable variants are those having homologous nucleotide sequences but comprising all, or portions of, sequence, which are altered by the substitution of different codons that encode an amino acid with a side chain of similar biophysical properties to the amino acid it substitutes, to produce a conservative change. For example, small non-polar, hydrophobic amino acids include glycine, alanine, leucine, isoleucine, valine, proline, and methionine. Large non-polar, hydrophobic amino acids include phenylalanine, tryptophan and tyrosine. The polar neutral amino acids include serine, threonine, cysteine, asparagine and glutamine. The positively charged (basic) amino acids include lysine, arginine and histidine. The negatively charged (acidic) amino acids include aspartic acid and glutamic acid. It will therefore be appreciated which amino acids may be replaced with an amino acid having similar biophysical properties, and the skilled technician will know the nucleotide sequences encoding these amino acids.

All of the features described herein (including any accompanying claims, abstract and drawings), and/or all of the steps of any method or process so disclosed, may be combined with any of the above aspects in any combination, except combinations where at least some of such features and/or steps are mutually exclusive.

The following examples are provided to illustrate the present invention and should not be construed as limiting thereof.

For a better understanding of the invention, and to show how embodiments of the same may be carried into effect, reference will now be made, by way of example, to the accompanying Figures, in which:

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 shows univariate analysis of 44 clinical variables in LVO and non-LVO stroke patients. Each variable was analysed based on distribution normality. For normally distributed variables, mean and standard deviation (SD) are reported. For not normally distributed variables, median and interquartile range (IQR) are reported. P-values were obtained from Student's t (normally distributed continuous variables) Wilcoxon/Mann-Whitney (not normally distributed continuous variables), or Chi-square test (categorical variables), and were adjusted for multiple comparisons with Benjamini-Hochberg's method. NIHSS: national institute of health stroke severity. SBP: systolic blood pressure. APTT: activated partial thromboplastin time. PT: prothrombin time. DBP: diastolic blood pressure. RBC: red blood cells. CRP: C-reactive protein. NLR: neutrophil-to-lymphocyte ratio. OBT: stroke onset to blood collection time. MCV: mean corpuscular volume. MCH: mean corpuscular haemoglobin. WBC: white blood cells. * and *** indicate p-values <0.05 and 0.001, respectively.

FIG. 2 shows A) Plasma concentrations of blood biomarkers measured in LVO and non-LVO stroke patients. B) Plasma concentrations of GFAP measured in haemorrhagic and non-haemorrhagic stroke patients. ** and *** indicate Wilcoxon-Mann-Whitney p-value <0.01 and p-value <0.00, respectively; n.s. indicates p-value >0.05.

FIG. 3 shows receiver operating characteristic (ROC) curves obtained with individual biomarkers that were found significant in the univariate analysis, for the differentiation between LVO and non-LVO strokes. Area under the ROC curve (AUC) of each logistic model is indicated.

FIG. 4 shows the diagnostic performance of logistic models built on single biomarkers D-dimer, OPN and OPG. Concentration cut-off values estimated with ROC curve analysis are reported for each biomarker model. Values of diagnostic performance measures are shown, whit 95% confidence interval reported in brackets. P-values were calculated using Fisher's exact test on the contingency matrix of each model. LR+: positive likelihood ratio; LR−: negative likelihood ratio; OR: odds ratio.

FIG. 5 shows a comparison of a multivariable logistic model built on D-dimer, OPN, and OPG, and a multivariable logistic model built on GFAP, OPN, OPG, and D-dimer. The two models are compared with the Akaike Information Criteorion (AIC), model deviance, Area Under the receiving operating characteristic Curve (AUC), and likelihood ratio (LR) test. Df=degree of freedome of the LR test. P-value <0.05 is considered significant.

FIG. 6 shows that there was no change in the levels of blood biomarkers according to stroke Onset to Blood collection Time (OBT). The patient cohort was divided into OBT quartiles and differences were assessed with analysis of variance. N.s.=not significant.

FIG. 7 shows univariate regression for LVO prediction. The p-values indicate statistical significance of the covariate in the related model. Levels of D-dimer, OPN, OPG, and ADAMTS13 were log transformed, while levels of vWF underwent quadratic transformation; no transformation was applied to GFAP levels. D-dimer showed the most significant predictive value for LVO (OR 1.13, 95% CI 1.07 to 1.20; p-value<0.001).

FIG. 8 shows univariate and multivariable regression models for LVO prediction for biomarkers D-dimer and GFAP, stroke scores and combinations of biomarkers with stroke scores. Multivariable analysis found that the optimal set of blood biomarkers for LVO prediction was D-dimer (OR 15.44, 95% CI 4.91 to 57.6; p-value<0.0011) and GFAP (OR 0.83, 95% CI 0.5 to 0.99; p-value=0.03).

FIG. 9 shows a summary of the logistic regression models of each scale alone, or with added biomarkers, which are compared for their accuracy in predicting LVO by estimating the area under the receiver operating characteristic curve (AUC), presented with 95% CIs. To assess the value added by including blood biomarkers with each stroke scale in predicting LVO, LR test was performed comparing the model with each stroke scale alone and the model with addition of biomarkers. The addition of D-dimer and GFAP resulted in improved goodness of fit (i.e. lower AIC), LVO prediction (i.e. higher AUC), and significant LR test for each stroke scale tested, compared to using the stroke scales alone. The combination of D-dimer and GFAP with FAST-ED or EMSA resulted in the highest LR+ for LVO prediction (22.6, 95% CI 8.58 to 59.51 and 17.22, 95% CI 7.22 to 41.04, respectively), with LR− of 0.09 (95% CI 0.02 to 0.34) or 0.14 (95% CI 0.05 to 0.39), sensitivity of 91% (95% CI 71 to 98) or 86 (95% CI 66 to 97), and specificity of 95% (95% CI 89 to 98) or 94% (95% CI 88 to 98), respectively. LR p-values refer to the comparison between the model with a stroke scale alone and the corresponding model with the addition of biomarkers.

FIG. 10 shows ROC curves of stroke scales models with or without the addition of biomarkers. Addition of D-dimer and GFAP resulted in improved goodness of fit (i.e. lower AIC), LVO prediction (i.e. higher AUC), and significant LR test for each stroke scale tested, compared to using the stroke scales alone.

FIG. 11 shows a summary of plasma concentrations of D-dimer, OPN, OPG, vWF, ADAMTS13, and GFAP in the plasma of LVO and non-LVO patients. The inventors found statistically significant differences for the following blood biomarkers: D-dimer (1.31±2.0 and 0.42±0.45 μg/mL respectively, p-value <0.001); OPN (1.71±1.05 and 1.16±1.09 ng/mL respectively, p-value <0.01); OPG (125.24±60.96 and 97.96±54.29 pg/mL respectively, p-value <0.01). Median values are reported (pg/mL), with IQR values shown in brackets. Wilcoxon-Mann Whitney p-values are shown.

FIG. 12 provides a summary of the evaluation of stroke severity scales in LVO and non-LVO patients. Median values of stroke severity scales obtained for all patients, LVO, and non-LVO patients. IQR values shown in brackets. Wilcoxon-Mann Whitney was used to calculate p-values.

FIG. 13 shows the equation coefficients associated to each biomarker and stroke severity score, when used in different combinations (i.e. model). While every model always has an “Intercept” coefficient, the coefficient of each biomarker will depend on weather that biomarker is included in the model. Preferably, the reported coefficients are to be used when calculating the LVO stroke score.

FIG. 14 summarises the measures of sensitivity, specificity, positive likelihood ratio (LR+), and negative likelihood ratio (LR−) for various combination of the biomarkers with stroke scores. For each model, the cut-off point was selected by maximising specificity for LVO prediction while maintaining a minimum specificity level of 90%, in line with power analysis. Correction for optimistic predictions was performed through bootstrapping with 2000 resamples and presented with CIs. The combination of D-dimer and GFAP with FAST-ED or EMSA resulted in the highest LR+ for LVO prediction (22.6, 95% CI 8.58 to 59.51 and 17.22, 95% CI 7.22 to 41.04, respectively), with LR− of 0.09 (95% CI 0.02 to 0.34) or 0.14 (95% CI 0.05 to 0.39), sensitivity of 91% (95% CI 71 to 98) or 86 (95% CI 66 to 97), and specificity of 95% (95% CI 89 to 98) or 94% (95% CI 88 to 98), respectively.

EXAMPLE 1 Example 1A: Sample Preparation

A sample of blood may be withdrawn via venipuncture from a human subject and collected into tubes containing sodium EDTA and immediately placed on ice. Alternatively, a sample of CSF may be obtained by lumbar puncture.

The need for and type of processing of the sample prior to biomarker detection depends upon the biomarker to be detected and/or the assay to be used to detect the biomarker. Where whole blood is required for analysis, the sample can be used as obtained. Alternatively, the sample can be diluted with saline solution to obtain an appropriate concentration of biomarkers that are compatible with the required type of biomarker detection assay.

If blood plasma is required for analysis, the whole blood sample can be centrifuged to obtain the plasma, for example at 2000 g for 15 minutes at 4° C. The plasma can then be drawn off and used directly, or diluted with saline solution as required for the biomarker detection assay.

Example 1b: Optimisation of the Assay

Rabbit monoclonal antibodies are purchased from Abcam, Cambridge UK. A known concentration of isolated or recombinant antibody is applied in a preliminary assay to determine the specificity of antibodies to recognise and bind the target biomarker. To determine optimal concentration of the antibodies an indirect ELISA is performed wherein the isolated or recombinant biomarker protein is attached to an ELISA microtiter plate. Rabbit monoclonal anti-human biomarker antibody is coated to the microtiter plate to determine the concentration of antibody necessary to obtain a maximum signal, allowing determination of the lower limit of detection of indirect ELISA for each antibody. After incubation of a diluted sample with a rabbit monoclonal antihuman biomarker antibody for 2 hours, and appropriate wash is performed, a monoclonal anti-human biomarker antibody labelled with biotin is then added and incubated with captured biomarker. Multiple steps of washing are then performed, after which horseradish peroxidase conjugated with streptavidin is added. Incubation of the reagents for one hour is then followed by other washing steps, after which the generated conjugate is contacted with hydrogen peroxide tetramethyl benzadine, producing a yellow product. The reaction is stopped by adding acidic solution and reaction signal mis-measured by absorbance at 450 nanometers, with the absorbance being proportional to the concentration of the biomarker. By plotting absorbance values as a function of measured biomarker quantities in samples at known biomarker concentrations a standard curve is obtained. The standard curve is then used to determine the quantity of target biomarker in unknown samples.

Example 1C: Materials for Biomarker Analyses

Illustrative reagents used in performing the subject invention include Sodium bicarbonate (Sigma Cat #: C-3041), blocking buffer (Startingblock T20-TBS) (Pierce Cat #: 37543), Tris buffered saline with Tween 20 (TBST; Sigma Cat #: T-9039). Phosphate buffered saline (PBS; Sigma Cat #: P-3813); Tween 20 (Sigma Cat #: P5927); Ultra TMB ELISA (Pierce Cat #: 34028); and Nunc maxisorp ELISA plates (Fisher). Monoclonal and polyclonal antibodies against heart fatty acid binding protein (H-FABP), brain fatty acid binding protein (B-FABP), Abeta 1-40, OPG, soluble tumor necrosis factor-like weak inducer of apoptosis (sTWEAK), pro-vWF, retinol binding protein 4 (RBP4), ADAMTS13, NMDA receptor 2 peptide (NR2 peptide), 20-HETE, brain natriuretic peptide (BNP), glial fibrillary acidic protein (GFAP), D-dimer, C-reactive Protein (CRP), matrix metallo-proteinase 9 (MMP9), interleukin 6 (IL-6), osteopontin (OPN), Troponin I, s100b, von Willebrand Factor (vWF), P-selectin are purchased from Abcam, Cambridge, UK. Labels for antibodies of numerous subtypes are available from Expedeon Ltd, Cambridge, UK. Protein concentrations in samples are determined using bicinchoninic acid microprotein assays (Pierce Inc., Rockford, Ill., USA) with albumin standards. All other necessary reagents and materials will be known to those of skill in the art and are readily ascertainable. Colorimetric assay kits for bilirubin, succinate, N-acetylaspartate, Propionyl-L-carnitine, glutamate are available from Abcam, Cambridge, UK and Biovision Inc, Milpitas, Calif.

Example 2

Methods

Patient Recruitment and Sample Processing

Suspected stroke patients within 18 hours “since last known well” were recruited retrospectively after their arrival to the emergency department (ED) of the Freeman hospital and of the Royal Victoria Infirmary hospital at Newcastle upon-Tyne (UK).

One 4 mL sample of venous blood was withdrawn within 30 minutes from arrival, and immediately stored at +4° C. in the dark until processing. Blood plasma was obtained by centrifugation of whole blood at 2000×g for 15 minutes at +4° C. After processing, plasma samples were immediately frozen at −80° C. until biomarker measurement.

Adjudication of Diagnosis

170 patients with suspected stroke were identified by ambulance paramedics and ED clinicians. Adjudication of stroke subtype, stroke mimic, or TIA diagnosis was based on brain imaging results and neurologist report. Diagnosis of haemorrhagic stroke was based on results from computerised tomography (CT) brain scan, while adjudication of stroke mimic or transient ischaemic attack (TIA) was based on neurologist report. Ischaemic stroke patients were subdivided into 3 categories, based on neurologist report, CT angiography (CTA) imaging, and NIHSS score. Ischemic stroke patients labelled as “unknown” were excluded from subsequent analysis due to uncertainty of diagnosis. Exclusion of 23 “unknown” ischemic stroke and utilisation of 19 samples for immunoassay testing, led to a final patient cohort of 128 suspected stroke patients that were submitted to biomarker measurement and statistical analysis.

Derivation of Pre-Hospital Stroke Scales from NIHSS Score

FAST score was calculated by assigning 1 point for any presence of facial paresis (NIHSS item 4), 1 point for any arm weakness (NIHSS item 5a/b), and 1 point for any speech impairment (NIHSS item 9). FAST-ED was calculated as described by Lima et al⁵, RACE score was calculated as described by Perez de la Ossa⁷, CPSS was calculated as described by Katz et al¹⁹, and EMSA was calculated as described by Gropen et al¹⁰.

Measurement of Blood Biomarkers

Plasma biomarkers were measured with commercial enzyme-linked immunosorbent assays (ELISA) following manufacturer's instructions. ELISA kits or matched antibody pairs were purchased from Abcam (Cambridge, UK): D-dimer (product number: ab196269), OPN (product number: ab100618), OPG (product number: ab100617), GFAP (product number: ab222279), vWF (product number: ab223864), and ADAMTS13 (product number: ab234559). Plasma sample dilutions for detection of each biomarker were as follows: D-dimer (1:80), OPN (1:2), OPG (1:6), GFAP (1:2), vWF (1:4000), ADAMTS13 (1:800). Samples were diluted in dilution buffers as described by manufacturer's instructions. All samples were analysed in duplicate and the mean value was used for quantification. For all biomarkers, the average coefficient of variation was <10%. Biomarker quantification was performed by linear or second order polynomial interpolation against calibration curves obtained with known concentrations of each analyte. GraphPad Prism version 8.4.3 was used for biomarker quantification.

Statistical Analysis

For univariate analysis of individual blood biomarkers or clinical variables, normality of distributions was assessed by Shapiro-Wilk test. For continuous variables, those normally distributed (Shapiro-Wilk p-value >0.1) were analysed by Student's t-test and mean and standard deviation (SD) values are given, whereas for variables with non-normal distribution Wilcoxon-Mann-Whitney U test was used and median and interquartile range (IQR) are reported. Intergroup differences were assessed by Pearson's chi-square test for categorical variables. When >10 variables were tested at the same time, multiple hypothesis correction was performed with Benjamini-Hochberg method. Analysis of variance was used to assess the interaction between all blood biomarkers and subtypes of suspected stroke. If overall significance was confirmed, pairwise comparisons were performed with Tukey's test.

To identify the optimal panel of blood biomarkers for LVO prediction, we used a multivariate logistic regression with Diagnosis (LVO vs non-LVO) as outcome variable and plasma levels of D-dimer, GFAP, OPN, OPG, vWF, and ADAMTS13 as exploratory variables. Bidirectional stepwise elimination based on Akaike information criterion (AIC) levels was used for model selection. Linearity between predictors and outcome measure was assessed through logarithmic and quadratic transformation. Transformations were selected based on the AIC.

To investigate whether the addition of blood biomarkers improved the accuracy of stroke severity scales for LVO identification, we used a second multivariate logistic with Diagnosis as the outcome variable and the optimal panel and one of the stroke severity scales (FAST, FAST-ED, RACE, C-STAT, or EMSA) as exploratory variables. We used this approach because the scales were highly correlated, and, since a comparison of different severity scales was outside the scope of this work, this approach reduced the level of collinearity in the model.

To assess the goodness of fit of the blood biomarker panel and the stroke scales, the likelihood ratio test (LR) and AIC were used. The area under the receiver operating characteristic curve (AUC) with 95% CIs was used as a measure of discrimination. At selected cut-off points sensitivity, specificity, positive likelihood ratio (LR+), and negative likelihood ratio (LR−) were also evaluated. For each model, the cut-off point was selected by maximising specificity for LVO prediction while maintaining a minimum specificity level of 90%, in line with our power analysis. Correction for optimistic predictions was performed through bootstrapping with 2000 resamples, and presented with confidence intervals (CI).

All analyses were performed with R version 3.6.2 with the help of RStudio version 1.2.5033 by using the packages nnet, ROCR, caret, tidyverse, oddsratio, lmtest, and OptimalCutpoints.

Example 2A: Cohort Description and Clinical Variables Analysis

In this study, the inventors retrospectively recruited 170 patients with suspected stroke. After adjudication of diagnosis (Methods), the inventors obtained a final cohort of 128 suspected stroke patients that was composed of the following stroke subtypes: haemorrhagic stroke (n=16, 12.5%), LVO ischemic stroke (n=23, 18%), non-LVO ischemic strokes (n=42, 33%), stroke mimic (n=31, 24%), transient ischemic attack (n=16, 12.5%). The cohort's median stroke onset-to-blood collection time (OBT) was 158 minutes (IQR=161.5 minutes).

The inventors assessed the difference between LVO and non-LVO patients (including ischemic non-LVO, haemorrhagic, and non-stroke patients) of 42 clinical variables associated with each patient (FIG. 1 ). After adjustment for multiple hypothesis testing, the inventors found significant differences in NIHSS score (p-value=7.04^(e-08); median LVO vs non-LVO: 18 vs 3; IQR LVO vs non-LVO: 8.5 vs 5), presence of atrial fibrillation (p-value=0.0002; absence/presence LVO vs non-LVO: 11/12 vs 94/11), and systolic blood pressure (p-value=0.033; mean LVO vs non-LVO: 140 vs 157; SD LVO vs non-LVO: 22 vs 29). In our cohort, age and gender were not significantly associated with LVO diagnosis. Of note, we found no differences in the time from stroke onset to blood withdrawal in LVO vs non-LVO patients.

Example 2B: Blood Biomarkers for LVO Identification

The inventors then set out to investigate the levels of a panel of blood proteins in the patient cohort. they measured the levels of D-dimer, osteopontin (OPN), osteoprotegerin (OPG), von-Willebrand factor (vWF), a disintegrin and a metalloproteinase with a thrombospondin type I motif, member 13 (ADAMTS13), and glial fibrillary acidic protein (GFAP) in the plasma of LVO and non-LVO patients (FIGS. 2A, 7 and 11 ). the inventors found statistically significant differences between LVO and non-LVO patients for the following blood biomarkers: D-dimer (p-value <0.001; mean LVO vs non-LVO: 1.31 vs 0.42 pg/mL; SD LVO vs non-LVO: 2.00 vs 0.45 μg/mL), OPN (p-value <0.01; mean LVO vs non-LVO: 1.71 vs 1.16 ng/mL; SD LVO vs non-LVO: 1.05 vs 1.09 ng/mL), and OPG (p-value <0.01; mean LVO vs non-LVO: 125.24 vs 97.96 pg/mL; SD LVO vs non-LVO: 60.96 vs 54.29 pg/mL). Without wishing to be bound to any specific theory, the inventors believe that this data suggests that, among the biomarkers tested in the panel, D-dimer, OPN, and OPG may help in the identification of LVO strokes.

The inventors then built logistic regression models based on the levels of each significant biomarker. They estimated the area under the ROC curve of each model, and found that D-dimer resulted in an AUC of 0.80, while the AUCs associated with OPN and OPG were 0.66 and 0.67, respectively (FIG. 2 ). With ROC curve analysis we estimated cut-off levels for D-dimer, OPN, and OPG by maximising diagnostic specificity for LVO identification, whilst maintaining a minimum level of sensitivity of 50% (Table 2). All 3 biomarkers achieved >70% specificity for LVO identification, with D-dimer achieving almost 90% specificity (FIG. 4 ). Notably, D-dimer, OPN, and OPG were independent predictors of LVO status, with OR 10.34 (CI 95%: 4.65-20), 3.05 (CI 95%: 1.48-5.63), and 3.36 (CI 95%: 1.68-6.32), respectively.

GFAP was included in the inventor's panel due to its known association with haemorrhagic stroke²⁰⁻²². In line with this hypothesis, GFAP levels were increased in haemorrhagic strokes, compared to non-haemorrhagic stroke and non-stroke patients (FIG. 1B; p-value=0.007; mean haemorrhagic vs non-haemorrhagic/non-stroke: 1043.46 vs 66.10 pg/mL; SD haemorrhagic vs non-haemorrhagic: 2581.28 vs 127.24 pg/mL). The inventors built a logistic regression model based on GFAP plasma levels, for the identification of haemorrhagic stroke in our cohort. Applying ROC curve analysis, they found that a cut-off value of 265 pg/mL on GFAP levels was able to identify haemorrhagic patients with an accuracy of 88%, a sensitivity of 30%, and a specificity of 96%. Notably, GFAP levels higher than 265 pg/mL were an independent predictor of haemorrhagic stroke in our cohort (OR: 12.27; CI 95%: 2.87-52.52; p-value=0.0015).

The inventor's findings suggest that a biomarker panel composed of OPN, OPG, and D-dimer (OOD) could help in the identification of LVO. The inventors built a logistic model based on the levels of OOD biomarkers and applied ROC curve analysis to estimate the logistic model threshold with highest accuracy for the identification of LVO (FIG. 5 ). They found that a model threshold of 0.69 was able to identify LVO patients with an accuracy of 83% (CI 95%: 79-88%), sensitivity of 57% (CI 95%: 42-71%), specificity of 90% (CI 95%: 86-93%), positive likelihood ratio of 5.7 (CI 95%: 3.47-9.39), and negative likelihood ratio of 0.48 (CI 95%: 0.32-0.64). Of note, patients scoring with a model value lower than 0.69 had >12 times higher probability to be suffering from LVO stroke, compared to patients with higher model values (OR 12.56; CI 95%: 5.48-27.71). This finding indicates that a biomarker panel composed of OPN, OPG, and D-dimer (OOD) could help in the identification of LVO strokes.

In addition, the inventor's findings suggest that inclusion of GFAP in the biomarker panel could help to rule out haemorrhagic stroke from the population of suspected stroke patients, potentially improving LVO identification. To test this hypothesis, they estimated the LVO diagnostic performance of a biomarker panel composed of GFAP, OPN, OPG, and D-dimer (GOOD), and compared its performance with the OOD model (FIG. 5 ). Maximisation of accuracy with ROC curve analysis, estimated a logistic model threshold of 0.59 which allowed to identify LVO patients with an accuracy of 86% (CI 95%: 82-90%), sensitivity of 52% (CI 95%: 38-67%), specificity of 94% (CI 95%: 91-97%), positive likelihood ratio of 10.14 (CI 95%: 5.09-21.67), and negative likelihood ratio of 0.51 (CI 95%: 0.35-0.66). Notably, inclusion of GFAP in the OOD panel almost doubled the probability for LVO patients to test positive (OR 21.06; CI 95%: 8.17-50). Application of the logistic model threshold with highest predicted accuracy (cut-off=0.59) identified patients with the following ranges of biomarker levels: GFAP: 17.43-184.27 pg/mL; OPN: 0.71-1.86 ng/mL; OPG: 73.34-205.47 pg/mL; D-dimer: 2.42-4.65 μg/mL.

The inventors estimated the different levels of diagnostic performance obtained by varying the logistic model threshold of the GOOD biomarker model (FIG. 6 ). They divided the model values distribution into deciles, and found that the first two deciles (logistic model values: 0.18-0.71) were the most significant for LVO identification. Indeed, the odds ratio of LVO patients to have a positive test are 16.67 (CI 95%: 5.44-51.4; p-value=0.00011) and 5.55 (CI 95%: 2.11-12.50; p-value=0.0129), when the logistic model threshold was set at the first and second decile, respectively (FIG. 6 ). These data indicate that a biomarker panel composed of GFAP, OPN, OPG, and D-dimer (GOOD) may provide a highly specific tool for the identification of LVO from the population of pre-hospital suspected stroke patients.

The inventors performed additional multivariable analysis and found, surprisingly, that the optimal set of blood biomarkers for LVO prediction was D-dimer (OR 15.44, 95% CI 4.91 to 57.6; p-value<0.0011) and GFAP (OR 0.83, 95% CI 0.5 to 0.99; p-value=0.03 FIG. 10 ). The AUC of the model with D-dimer and GFAP for LVO prediction was 81% (95% CI 74 to 88%; (FIG. 9 ) and the accuracy was 85% (95% CI 81 to 89%; Table 5). The inventors estimated a model threshold by maximising specificity and obtained sensitivity levels of 56% (95% CI 34 to 76%), specificity of 91% (95% CI 84 to 96%), LR+ of 6.99 (95% CI 3.29 to 14.88), and LR− of 0.47 (95% CI 0.3 to 0.76): (FIG. 14 ).

Example 2D—Integration of Biomarkers with Field Stroke Scales

Several pre-hospital scales based on patient symptoms have been developed for the identification of LVO stroke in the field and have shown high levels of diagnostic sensitivity for LVO, but lack diagnostic specificity^(5,7,10,19,23). The inventor's findings suggest that the GOOD biomarker panel could offer a highly specific tool for LVO identification. The inventors therefore hypothesised whether the inclusion of the blood biomarker panel could improve the diagnostic specificity of LVO prehospital stroke scales. They used the NIHSS score items to derive the stroke scales FAST, FAST-ED, RACE, CPSS, and EMSA, and estimated their diagnostic performance at established scale thresholds (FIG. 7 ). In the cohort, FAST-ED and RACE achieved highest diagnostic performance for LVO identification with accuracy of 84% (CI 95%: 80-89) and 86% (CI 95%: 82-91), and OR of 32.11 (12.86-81.4) and 24.54 (10.73-52.78), respectively.

The inventors then combined the blood biomarkers to pre-hospital stroke scales, and found that the GOOD panel improved diagnostic performance of all stroke scales tested (FIGS. 8 and 14 ). Highest diagnostic performance for LVO prediction was obtained with the combination of GOOD with FAST-ED, which achieved an accuracy of 96% (CI 95%: 94-98), sensitivity of 91% (CI 95%: 83-100), specificity of 97% (CI 95%: 95-99). According to this model, LVO patients were 39 (CI 95%: 18.2-96.09) times more likely to have a positive test, compared to non-LVO patients. Although the inventors found significant associations between our biomarkers and FAST-ED scale (GFAP: p-value=0.00139; OPN: p-value=0.01321; OPG: p-value=0.04144; D-dimer: p-value=0.00002), the logistic model built on the GOOD biomarkers was still highly significant, after adjustment for such associations (Fisher's exact p-value=6.53^(e-12)).

Further analysis by the inventors found that addition of D-dimer and GFAP resulted in improved goodness of fit (i.e. lower AIC), LVO prediction (i.e. higher AUC), and significant LR test for each stroke scale tested, compared to using the stroke scales alone (FIGS. 9, 10 and 14 ). The combination of D-dimer and GFAP with FAST-ED or EMSA resulted in the highest LR+ for LVO prediction (22.6, 95% CI 8.58 to 59.51 and 17.22, 95% CI 7.22 to 41.04, respectively), with LR− of 0.09 (95% CI 0.02 to 0.34) or 0.14 (95% CI 0.05 to 0.39), sensitivity of 91% (95% CI 71 to 98) or 86 (95% CI 66 to 97), and specificity of 95% (95% CI 89 to 98) or 94% (95% CI 88 to 98), respectively.

Without wishing to be bound to any particular theory, the inventor's findings indicate that the combination of D-dimer, OPN, OPG and GFAP, and particularly D-dimer and GFAP, with pre-hospital stroke scales can provide a highly accurate tool and could significantly enhance identification of LVO strokes.

Discussion

The inventors have for the first time identified OPN, OPG, and D-dimer as biomarkers for LVO stroke. They have also demonstrated that a biomarker panel composed of GFAP, OPN, OPG, and D-dimer (GOOD) can provide a valuable tool for the highly specific (94%) identification of stroke patients with a large vessel occlusion (LVO), from the population of suspected stroke patients. Moreover, the inventors have shown that combining the GOOD biomarker panel with pre-hospital stroke scales based on patient symptoms, can result in unprecedented diagnostic accuracy (>95%) for LVO identification.

The inventors analysed the plasma of 128 patients with suspected stroke. The observed proportion of LVO stroke, compared to all confirmed ischemic stroke, was 32%, which is line with previous reports¹. In addition, the proportion of stroke mimics that we observed (29%), is comparable to other studies⁶⁷.

The inventors found that a cut-off value of 265 pg/mL on GFAP levels could identify haemorrhagic patients with a sensitivity of 30% and a specificity of 96%. To the inventor's knowledge, no studies have addressed directly the ability of GFAP measurements as a diagnostic tool to identify LVO patients. In addition, previous studies have not addressed the ability of plasma GFAP measurements to identify LVO patients.

The inventor's study demonstrates that, when measured with other blood biomarkers, GFAP can significantly improve LVO identification, by ruling out haemorrhagic patients from the population of suspected strokes. The inventors provide the first evidence that measurement of plasma GFAP could be used as a tool to diagnose and triage LVO patients.

The inventor's results also show not only that OPN and OPG are individually increased in LVO vs non-LVO patients, but also that both biomarkers significantly contribute to LVO identification either individually or when combined in the inventor's biomarker panel. While previously published studies focused on comparing D-dimer levels between subtypes of ischemic stroke or between ischemic stroke and control subjects, the inventor's study assessed D-dimer levels in LVO patients compared to a heterogeneous group of suspected stroke patients encompassing haemorrhagic stroke, non-LVO ischemic stroke, stroke mimics, and TIAs, thus simulating a realistic clinical scenario.

To the inventor's knowledge, this is the first evidence of increased D-dimer levels in LVO patients compared to a population of suspected stroke patients that closely resembles the one found in the pre-hospital setting.

The inventors have shown that the combination of multiple biomarkers into a panel allows to obtain higher diagnostic performance for LVO identification, compared with the use of individual biomarkers. In the inventor's study, the combination of GFAP, OPN, OPG, and D-dimer enabled to identify LVO stroke with 86% accuracy, which was higher compared to the highest scoring individual biomarker (i.e. D-dimer). Nevertheless, measurement of each biomarker alone still provides an accurate means of diagnosing LVO stroke. In particular, D-dimer alone resulted in a diagnostic accuracy of 83%, with clinically acceptable levels of specificity and sensitivity (89% and 52%, respectively), and the combination of D-dimer with GFAP results in even greater accuracy, with specificity and sensitivity of 91% and 56%, respectively.

These findings suggest that, although a more complex biomarker panel would allow more accurate identification of LVO strokes, the measurement of the biomarkers alone, and in particular D-dimer, may be chosen in particular clinical scenarios; for example, scenarios where blood sampling techniques do not allow collection of large blood volumes (e.g. field finger-prick sampling), or when test simplicity and rapidity are the priority (e.g. ambulance).

Several stroke scales based on patient symptoms have been developed to identify LVO stroke patients in the pre-hospital setting. In this study, the inventor's derived the LVO pre-hospital stroke scales FAST-ED, RACE, CPSS, and EMSA. In addition, they derived the FAST score, as this is currently the most widely applied pre-hospital scale. The inventors estimated diagnostic measures of these scales for LVO identification, and observed that their prediction performance was higher, compared to previous studies⁵⁻¹⁰. This could be due to the fact that they derived these stroke scales from the NIHSS score of each patient, which was taken by expert neurologists, instead of by trained paramedics.

The overall aim of identifying LVO patients in the field is to guide the decision of the ambulance staff towards transportation of suspected stroke patients to stroke centres with specialised capabilities. Since LVO stroke patients require treatment with endovascular thrombectomy (EVT), identification of these patients in the field could direct transportation to EVT-capable centres, even if these are not the nearest stroke centre. Direct transportation of LVO patients to EVT-capable centres has been shown to reduce time to treatment and patients outcome, compared to inter-hospital transfer²⁴. Despite this, the use of pre-hospital stroke scales in the field is scattered across countries and their clinical value remains to be validated and confirmed. This could be due, as it has been previously suggested²⁵, to the limited diagnostic specificity for LVO thus far demonstrated. Indeed, high levels of specificity (or positive predictive value) would be required to modify the ambulance journey from transportation to the nearest stroke centre, towards the nearest EVT-capable centre²⁶.

In this study the inventors propose the combination of blood biomarkers with pre-hospital stroke scales for the identification of LVO. The inventors have identified novel biomarkers for LVO stroke and have demonstrated that a model built on the GOOD biomarker panel in conjunction with pre-hospital stroke scales, can lead to an even higher predictive ability for LVO, compared to the use of blood biomarkers, or stroke scales, in isolation. The inventors observed that the combination of the GOOD biomarker panel with FAST-ED resulted in the highest diagnostic accuracy for LVO (96%), while the combination with RACE led to the highest sensitivity (81%). Of note, the highest diagnostic specificity (98%) was obtained when combining the GOOD panel with either FAST or EMSA. The inventors have also shown that these findings indicate that, combining the biomarker panel with pre-hospital stroke scales, could provide the much-needed diagnostic performance to triage LVO patients in the field with confidence.

In order to address various issues and advance the art, the entirety of this disclosure shows by way of illustration various embodiments in which the claimed invention(s) may be practiced and provide for a superior diagnostic test for stroke resulting from large vessel occlusion. The advantages and features of the disclosure are of a representative sample of embodiments only, and are not exhaustive and/or exclusive. They are presented only to assist in understanding and teach the claimed features. It is to be understood that advantages, embodiments, examples, functions, features, structures, and/or other aspects of the disclosure are not to be considered limitations on the disclosure as defined by the claims or limitations on equivalents to the claims, and that other embodiments may be utilised and modifications may be made without departing from the scope and/or spirit of the disclosure. Various embodiments may suitably comprise, consist of, or consist essentially of, various combinations of the disclosed elements, components, features, parts, steps, means, etc. In addition, the disclosure includes other inventions not presently claimed, but which may be claimed in future.

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1. A method of treating large vessel occlusion (LVO) stroke comprising: (i) identifying an individual presenting with stroke symptoms; (ii) determining that the individual is experiencing LVO stroke comprising: (a) obtaining a sample from the individual; (b) measuring the amount of D-dimer in the sample; and (c) measuring the amount of glial fibrillary acidic protein (GFAP) in the sample; (iii) providing LVO therapy to the individual having elevated levels of D-dimer and decreased levels of GFAP compared to levels of D-dimer and GFAP in one or more controls.
 2. The method of claim 1, wherein the LVO therapy comprises administration of an antithrombotic agent and/or mechanical thrombectomy.
 3. The method of claim 1, wherein determining that the individual is experiencing LVO stroke further comprises one or more of computerized tomography (CT), CT angiography (CTA), magnetic resonance angiography (MRA), MRI, diffusion weighted imaging, or cerebral angiography scan of the individual's head.
 4. The method of claim 1, wherein the sample from the individual is obtained from one or more of the individual's blood, plasma, cerebrospinal fluid or saliva.
 5. The method of claim 1, wherein the individual receiving LVO therapy has D-dimer levels of at least 0.5 μg/ml and GFAP levels of less than 265 pg/ml.
 6. The method of claim 1, wherein the individual receiving LVO therapy has D-dimer levels of at least 1 μg/ml and GFAP levels of less than 200 pg/ml.
 7. The method of claim 1, wherein the individual receiving LVO therapy has D-dimer levels of at least 1.5 μg/ml and GFAP levels of less than 100 pg/ml.
 8. The method of claim 1, further comprising determining a stroke severity score from the individual, wherein the stroke severity score is selected from NIHSS, FAST, FAST-ED, RACE, C-STAT and EMSA.
 9. A method of treating large vessel occlusion (LVO) stroke comprising: (i) identifying an individual presenting with stroke symptoms; (ii) determining that the individual is experiencing LVO stroke comprising: (a) obtaining a sample from the individual; (b) measuring the amount of D-dimer in the sample; (c) measuring the amount of glial fibrillary acidic protein (GFAP) in the sample; and (d) measuring one or more of (1) the amount of osteopontin (OPN) in the sample and (2) the amount of osteoprotegerin (OPG) in the sample; and (iii) providing LVO therapy to the individual having elevated levels of D-dimer, decreased levels of GFAP, and one or more of (1) elevated levels of OPN and (2) elevated levels of OPG, compared to levels of D-dimer, GFAP, and OPN and/or OPG in one or more controls.
 10. The method of claim 9, wherein the LVO therapy comprises administration of an antithrombotic agent and/or mechanical thrombectomy.
 11. The method of claim 9, wherein determining that the individual is experiencing LVO stroke further comprises one or more of computerized tomography (CT), CT angiography (CTA), magnetic resonance angiography (MRA), MRI, diffusion weighted imaging, or cerebral angiography scan of the individual's head.
 12. The method of claim 9, wherein the sample from the individual is obtained from one or more of the individual's blood, plasma, cerebrospinal fluid or saliva.
 13. The method of claim 9, wherein the individual receiving LVO therapy has D-dimer levels of at least 0.5 μg/ml and GFAP levels of less than 265 pg/ml; and one or more of (1) OPN levels of at least 1 ng/ml and (2) OPG levels of at least 100 pg/ml.
 14. The method of claim 9, wherein the individual receiving LVO therapy has D-dimer levels of at least 1 μg/ml and GFAP levels of less than 200 pg/ml; and one or more of (1) OPN levels of at least 1.6 ng/ml and (2) OPG levels of at least 125 pg/ml, or (3) OPN levels of at least 1.6 ng/ml and OPG levels of at least 120 pg/ml.
 15. The method of claim 9, wherein the individual receiving LVO therapy has D-dimer levels of at least 1.5 μg/ml and GFAP levels of less than 100 pg/ml; and one or more of (1) OPN levels of at least 2.5 ng/ml and (2) OPG levels of at least 200 pg/ml.
 16. The method of claim 9, further comprising determining a stroke severity score from the individual, wherein the stroke severity score is selected from NIHSS, FAST, FAST-ED, RACE, C-STAT and EMSA. 